Forthcoming articles

International Journal of Modelling, Identification and Control

International Journal of Modelling, Identification and Control (IJMIC)

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International Journal of Modelling, Identification and Control (119 papers in press)

Regular Issues

  • Modelling and compensation of temperature errors for articulated arm coordinate measuring machines   Order a copy of this article
    by Guanbin Gao, Wenjin Ma, Jing Na, Fei Liu 
    Abstract: Different from the traditional coordinate measuring machines which are generally used in a constant temperature room, the articulated arm coordinate measuring machine (AACMM) is used in industrial sites. Hence, the temperature variation is an important factor affecting the accuracy of AACMMs, and thermal deformation error modelling and compensation play an important role in improving the measuring accuracy of AACMMs. This paper addresses the modelling and compensation of temperature errors in the AACMM. Firstly, a temperature field model of AACMMs is established by finite element analysis, based on which the influence of temperature change on single-point repeatability accuracy and spatial distance measuring accuracy for AACMMs is analysed. The results of the analysis show that non-zero linear parameters of AACMMs are influenced by temperature variation greatly, while the angular parameters are almost unchanged. Furthermore, the spatial distance measuring accuracy of AACMMs is changed significantly rather than the repeatability when the temperature varies. Then, a temperature scaling method is proposed to improve the spatial distance measuring accuracy of AACMMs, and a linear regression temperature error compensation model is established under the simulation environment. Finally, the experimental research is carried out, and the results show that in the presence of temperature scaling method, the average absolute value of distance measuring accuracy is improved by 65.24%.
    Keywords: articulated arm coordinate measuring machine; repeatability; spatial distance measuring accuracy; error compensation; temperature compensation; finite element analysis.

  • Robust control with an anti-windup technique based in relaxed LMI conditions for LTV system   Order a copy of this article
    by Rosana Rego, Marcus Costa 
    Abstract: This paper proposes a new technique to address the anti-windup (AW) with a model predictive control (MPC) scheme for linear time-varying (LTV) systems. The design problem of the AW compensator is reduced to a linear matrix inequality optimisation problem with relaxation. The main advantage of this new approach is the reduced conservativeness compared with other well-known AW techniques and to prevent integration windup in MPC controllers when the actuators are saturated. The control with AW is applied in the polytope modelling of a three-state switching cell (3SSC) DC-DC converter operating under saturation conditions in the control signal to avoid the overlapping effect. The MPC with proposed anti-windup is compared with the MPC technique and with MPC-AW without relaxation. The MPC-AW with relaxation improves the performance when the converter is operated in the saturated mode and allows the rational use of the converter, preventing the saturation from damaging its performance in a permanent regime. The simulation results validated the efficiency of the proposed approach and showed that the relaxation approach not only allows working better with the polytope modelling but also improves the response under LTV disturbance.
    Keywords: anti-windup; model predictive control; boost converter; linear time-varying systems; linear matrix inequalities.

  • An iterative defogging algorithm based on pixel-level atmospheric light map   Order a copy of this article
    by Di Fan, Xiao Lu, Xiaoxin Liu, Wanda Chi, Shicai Liu 
    Abstract: Most defogging algorithms often lead to the problem of sky oversaturation and non-sky brightness. In order to solve these problems, a dark channel iterative demisting algorithm based on pixel level atmospheric light map is proposed in this paper. Firstly, the algorithm in this paper obtains a pixel-level atmospheric light map based on the model of the relationship between fog density and depth of field. Secondly, the algorithm uses an iterative defogging method to control the optimal defogging degree, thereby restoring high-quality defogging images. The experimental results show that the image obtained by the algorithm in this paper is not only high in definition but also real-time, and the problems of sky oversaturation and non-sky brightness are effectively solved.
    Keywords: image defogging; pixel-level; atmospheric light map; real-time; iterative defogging algorithm.

  • Radial basis function neural network observer based adaptive feedback control for the ABS system under parametric uncertainties and modelling errors   Order a copy of this article
    by Hamou Ait Abbas, Abdelhamid Rabhi, Mohamed Belkheiri 
    Abstract: An anti-lock braking (ABS) scheme control is a relatively difficult task owing to its highly uncertain nonlinear dynamics and the time-varying nature of the parameters. According to the requirement that the braking process must be fast and robust, we contribute in the current paper to extend the universal function approximation property of the radial basis function (RBF) neural network (NN) to design (a) an adaptive NN observer to estimate derivatives of the tracking error dynamics since the availability of the ABS model is not always practical, and (b) an robust NN output feedback controller that overcomes successfully parametric variations and uncertainties in order to address the tracking probem with bounded errors. Notice that the feedback linearisation control is introduced to linearise the ABS nonlinear system, and the dynamic compensator is involved to stabilise. The estimated states are used as inputs to the NN and in the adaptation laws as an error signal. The stability of the proposed controller in the sense of Lyapunov guarantees boundedness of both tracking errors, and estimating errors of the closed-loop system. Simulations of the proposed control algorithm based adaptive RBFNN observer are conducted then compared with the bang-bang controller to demonstrate its practical potential. Furthermore, both feasibility and efficiency have been successfully confirmed through robustness tests.
    Keywords: antilock braking system; parametric variations; unmodelled dynamics; radial basis function neural network; adaptive observer; robustness test.

  • Defect feature extraction and recognition of buried pipeline based on metal magnetic memory   Order a copy of this article
    by Yong Yang, Guan-Jun Wang, Yu Wang, Yong Wan, Yong-Shou Dai 
    Abstract: The surfaces of metal pipelines are always susceptible to various types of defect and damage, including corrosion defects and early stress concentration defects. Metal magnetic memory detection technology is the only non-destructive testing technology that can diagnose the early damage of ferromagnetic components. However, the metal magnetic memory original signal itself cannot directly recognise and distinguish corrosion defects and stress concentration defects. To solve this problem, this paper establishes a multi-characteristic statistical recognition method for the two defect types based on the metal magnetic memory technology and the magnetic memory test data obtained from pipeline test pieces. Next, this method is used to identify the defect types of four pipelines in the oilfield environment; the results demonstrate that the established defect type recognition method is effective for the identification of pipeline corrosion defects and early stress concentration defects. Because the recognition rate of the proposed method is high enough, the results of this study can provide a certain reference for the research in this field, and the proposed method has satisfactory practical application value.
    Keywords: metal magnetic memory; pipeline defects; corrosion defects; stress concentration defects; defect type recognition.

  • Machine vision based edge detection method for toilet seats   Order a copy of this article
    by Bingyan Cui, Peng Chen, Weicun Zhang 
    Abstract: When the grinding manipulator performs the task of grinding the edges of sanitary ceramics, there are problems of insufficient precision of the grinding path and insufficient stability of the grinding process. As an important module in robot control, trajectory planning plays a vital role in the stability and accuracy of the robot when working. Using the edge detection principle of machine vision for trajectory planning can provide high reliability for polishing the robot. Grinding the trajectory is more stable when grinding the edges of sanitary ceramics and can make the manipulator get rid of the harm caused by the strange posture and excessive working amplitude. According to the practical application characteristics of the toilet seat trimming process, this article proposes a new method of toilet seat edge detection. When there is a reflective area for edge detection, the method can eliminate the false edge of the image caused by the reflection. There are high precision and strong robustness in this new edge detection algorithm, which has a high guiding significance to assist the toilet seat processing industry.
    Keywords: machine vision; edge detection; toilet seats.

  • Robust design of proportional integral controllers: a Taguchi-grey approach   Order a copy of this article
    by Vinayambika S. Bhat, Shreeranga Bhat, E.V. Gijo 
    Abstract: The objective of this article is to apply and delineate a statistical approach for a robust design to determine the optimum levels of Proportional Integral (PI) controllers by considering the noise parameters in the control engineering arena. Taguchis robust engineering methodology along with Grey Relational Analysis (GRA) methodology is used for multi-objective optimisation of the process parameters. Taguchi method is effectively applied to ensure robustness of the controller designed under the set range of model parameter uncertainties, which cause undesirable variation in the performance of the PI controller. The ascertained optimal parameters from the Taguchi-grey approach are subjected to simulation analysis in the MATLAB/Simulink environment to analyse the settling time and performance indices. During the study, it is reconfirmed that the application of statistical tools assists in developing a robust controller design in a structured manner. Moreover, it is observed that the approach helps in multi-objective optimisation by accommodating both control and noise parameters in the control system design. The article presents a step-by-step approach in designing a robust controller through statistical tools. There is a gap in the academic literature regarding the application of a statistical approach in the robust design of PI controllers with specific attention to multi-objective optimisation. The article fulfils this void by systematically delineating the approach with both noise and control parameters.
    Keywords: robust design; PI controller; performance index; Taguchi method; grey relational analysis.

  • Developments on robust parallel compensator design and its possible applications   Order a copy of this article
    by Mingcong Deng 
    Abstract: A plant can be robustly stabilised via a static output feedback (SOF). However, for most real plants, sufficient conditions concerning the existence of such a static output feedback are not satisfied. Implementing a robust parallel compensator (RPC) on the plant is a good way to solve the problem. This paper investigates the developments on RPC design and its possible applications.
    Keywords: static output feedback; robust parallel compensator; uncertain plants.

  • Hinf filtering for a class of networked control systems with redundant channels subject to randomly occurring packet dropouts and cyber attacks   Order a copy of this article
    by Shuai Yin, Xiuying Li, Xianghua Ma, Kaitian Cao 
    Abstract: The problem of Hinf filter design is investigated for networked control systems subject to cyber attacks, which occur in a random way during the data transmission. The unavoidable packet dropout with uncertain expectation is considered, and the redundant channel is equipped to enhance the system performance by increasing the received data. A full-order filter is designed by means of the parameter-dependent Lyapunov function method, such that the corresponding filtering error dynamics is stochastically stable in the mean square with a prescribed Hinf disturbance attenuation level. The desired filter parameters are obtained via the linear matrix inequality technique. The vehicle suspension system is presented as an example to show the effectiveness of the proposed algorithm.
    Keywords: Hinf filter; cyber attacks; redundant channels; uncertain rates of packet dropouts; parameter-dependent Lyapunov function.

  • A fast robust template matching method based on feature points   Order a copy of this article
    by Shibing Yu, Xinli Xu, Zhen Jiang, Meihe Wang, Zhengze Li 
    Abstract: A method for template matching based on the feature matches between a target image and the template is proposed. Firstly, two sets of feature points from two images were extracted by ORB algorithm, and then the key points were matched to get a number of matching point pairs. Secondly, the wrong matches were removed to leverage feature numbers to improve quality. Finally, a grid framework was explored to locate the target object. Experiments demonstrated the great performance of the method.
    Keywords: template matching; feature points; ORB algorithm; leverage feature; motion statics model.

  • A novel approach to identify regional fault of urban power grid based on collective anomaly detection   Order a copy of this article
    by Xiaodi Huang, Minglun Ren 
    Abstract: Aiming to enhance the detection ability of regional fault in urban power grid, this paper proposes a novel detection approach based on collective anomaly detection and designs a fixed point iteration based multi-layers clustering (FPIML-clustering) algorithm. Firstly, based on abnormal signals received in urban power grid, multi-layered clustering is carried out by taking the upstream base station information of different energy levels of these abnormal points as the metric. Besides, fixed point iteration is introduced to accelerate the convergence rate. Secondly, according to different judgement rules, collective anomalies implicating the initial stage of regional faults can be identified by comparing the cluster information of the same layer as well as the upper and lower layers. The algorithm is tested on the power grid operation data of a Chinese city. The results demonstrate that the proposed approach can be used to detect potential regional faults before they reveal obvious fault characteristics.
    Keywords: urban power grid; regional fault; collective anomaly; multi-layered clustering; fixed point iteration.

  • Fault diagnosis for actuators of an intensified multifunctional Heat-Exchanger from the view of both plant and component levels   Order a copy of this article
    by Mei Zhang, Ze-tao Li, Qin-mu Wu, Boutaib Dahhou 
    Abstract: This paper proposes a FDD approach to the nonlinear model of the intensified heat exchanger system locally and globally. It implements the optimal performances monitoring on both internal dynamics of each component and the global system. The fault detection and diagnosis (FDD) of actuator is triggered once faults occur. The cause and effect relationship between unexpected temperature behaviour and internal variables of the faulty control valves is investigated. Simulations are considered to confirm the effectiveness of the proposed strategy.
    Keywords: fault diagnosis; control valve; intensified process; local fault filter; global performance monitoring.

  • Adaptive combination synchronisation of unknown chaotic Lorenz, L   Order a copy of this article
    by Mohammad Mossa Al-Sawalha 
    Abstract: In chaotic secure communication systems, the complexity of the chaotic career signal strengthens the security of the information signal. This article studies the adaptive combined synchronisation (ACS) for a class of different unknown chaotic systems. In this scheme, a combination of different states of the drive systems asymptotically synchronises with the desired states of the response system. Hence, the complexity of the communication channel is increased in secret communications. The Lyapunov stability theory proves the asymptotic stability of the closed-loop system at the origin. The design of a suitable adaptive controller ensures the target synchronisation. This work provides parameter update laws that estimate the true values of unknown parameters. This paper also presents two numerical examples of different unknown chaotic systems and simulation results that validate the efficiency and performance of the proposed ACS strategy. The presented ACS approach can be applied to multiple synchronisation strategies. The paper suggests some future problems related to this work.
    Keywords: combined synchronisation; Lyapunov stability theory; adaptive control technique; chaotic systems.

  • Fractional order active disturbance rejection control for trajectory tracking for a 4-DOF serial link manipulator   Order a copy of this article
    by Raouf Fareh, Mahmoud A. Y. Abdallah 
    Abstract: This paper presents a Fractional Order Active Disturbance Rejection Control (FOADRC) for a 4-DOF serial link manipulator to track a desired path in the Cartesian space and to ensure the stability of the tracking error. The Active Disturbance Rejection Control (ADRC) is known as a good technique to estimate the total disturbance from the dynamic model of the system and the external disturbances from the environment surrounding the robot and compensate them through suitable feedback control. This work takes advantage of the ADRC and the fractional-order controller to control the robot manipulator. The proposed control strategy has three main phases. First, converting the Cartesian space trajectory to joint space through the inverse kinematic process. Second, the FOARDC is developed to ensure good tracking in the joint space. The FOADRC uses the Extended State Observer (ESO) to estimate the total disturbances and the fractional-order PD as a feedback controller. Finally, the forward kinematic process is used to convert the real joint space trajectory into Cartesian space coordination. This proposed FOADRC is compared with the traditional ADRC to show the effectiveness of the proposed control strategy. Experimental results show that the FOADRC has better performance in terms of stability and error minimisation than the traditional ADRC.
    Keywords: FOADRC; serial link manipulator; ESO; dynamics; kinematics; stability; trajectory; MICO robot.

  • Polluted gas quantitative detection in a multi-gas sensor based on bidirectional long-short term memory network   Order a copy of this article
    by Jiangying Liu 
    Abstract: Quantitative detection of polluted gas by an electronic nose can reduce the cost of detection and improve the effciency of measurement. Through the effective pattern recognition method, the electronic nose can analyse the continuous periodic data and realise the detection of specific tasks. In this paper, pollution gas concentration prediction method based on bidirectional long-short term memory network (Bi-LSTM) is proposed. The effect of the Bi-LSTM model with different time steps, hidden layers and different combinations of sensor features on the performance of pollution gas prediction model is investigated. This method can extract deep features by automatically learning the gas response information of the sensor array, and its performance is better. The proposed method is verified on an air quality dataset, which proves that the proposed method has high accuracy in the quantitative detection of gas concentration based on electronic nose information.
    Keywords: quantitative detection; electronic nose; pattern recognition; pollution gas; bidirectional long-short term memory network.

  • Influence of some critical parameters on the stability of reaction fronts in liquid medium   Order a copy of this article
    by Hamza Rouah, Loubna Salhi, Ahmed Taik 
    Abstract: In this paper, we are interested to study the influence of some critical parameters on thermal frontal polymerisation in two cases: the first one where the monomer and the polymer are both in the liquid phase, and the second one when the monomer is liquid and the polymer is solid. The governing equations consist of coupling the Navier-Stokes equation to two convection-diffusion-reaction equations for the temperature and depth of conversion under the Boussinesq approximation. A formal asymptotic analysis is performed based on the Zeldovich and Frank-Kamenetskii approach to obtain an approximate interface problem in either case. The linear stability analysis is investigated to study the resulting interface models for both cases. The obtained dispersion relations of both cases are solved numerically, and then the stability conditions of the reaction fronts are found according to the different critical parameters of the problem considered. The instability conditions obtained are in good agreement with some previous studies.
    Keywords: frontal polymerisation; reaction fronts; Boussinesq approximation; Lewis number; stability analysis.

  • Adaptive parameter identification of lithium-ion batteries with adaptive linear neuron and state-of-charge estimation based on open circuit voltage   Order a copy of this article
    by Ghania Aggoun, Djaffar Ould Abdeslam, Rachid Mansouri 
    Abstract: The state of charge (SOC) is a critical parameter of a lithium ion battery. An accurate online estimation of the SOC is important for forecasting the electric vehicle driving range. A good estimation of the SOC results from a good identification of the battery parameters. Reducing the algorithm complexity is important to improve the accuracy of SOC estimation results. We propose in this work an original structure of an ADALINE (ADAptive LInear NEuron) to estimate the SOC. The ADALINE provides the weighted sum of the inputs, based on an online identification of the open-circuit voltage (OCV). The advantage of this approach is its adaptable capability and the speed of execution (fast training) as well as the possibility of interpreting these weights. The simulation results indicate that the proposed method can ensure an acceptable accuracy of SOC estimation for online application with a maximum error being less than 5%.
    Keywords: state-of-charge; equivalent circuit model; parameter identification; adaptive linear neuron; state observer design; open circuit voltage.

  • Performance enhancements of physical systems by reduced-order modelling and simulation   Order a copy of this article
    by Amit Kumar Manocha, Ankur Gupta 
    Abstract: It is a matter of great concern these days to simplify large-scale physical systems for obtaining a better understanding of the behaviour more accurately at a faster rate. Model order reduction techniques are used for simplification of the complex large-scale physical systems. This paper focuses on the designing of a method of model order reduction based on the mixed approach. The proposed method is designed by a combination of improved pole clustering to reduce the denominator and a genetic algorithm to reduce the numerator equation. The model order reduction technique proposed is compared with previously designed methods of model order reduction. These techniques are implemented in MATLAB simulation environment. The performance comparison is made based on the calculated parameters, viz. integral square error (ISE), rise time, percentage overshoot, steady-state error, and settling time for a real-time physical process. The stability of the reduced order model obtained from the proposed method is also checked by the value of gain margin and phase margin. The research work reveals that the proposed method provides an improved approximation of a large order system, as compared with previous techniques, with less error, improved accuracy and better transient and steady-state response.
    Keywords: balanced truncation; clustering; dominant pole retention; genetic algorithm; mixed approach; order reduction; physical system.

  • Natural gas engine model for speed and air-fuel control   Order a copy of this article
    by Yi Han, Peter Young 
    Abstract: With the low price of natural gas, and its low emissions, significant market growth for natural gas engines is likely in various applications. There are multiple challenges in controlling a natural gas engine, especially a pre-mixed lean burn natural gas engine. In particular, the system dynamics includes long fuel and air transport delays. In terms of natural gas engine control, our main focus is on engine speed control, engine output torque control, air/fuel ratio and emission regulation. In order to facilitate control study and development, we develop a control-oriented turbocharged pre-mixed lean burn natural gas engine mean value model. This model is designated for natural gas engine controller design, control algorithm development, and first step validation. The model is implemented in the MATLAB Simulink environment. The model is validated with a 10 L natural gas engine for power generation applications.
    Keywords: modelling; control systems; natural gas; internal combustion engine.

  • Displacement velocity control of a mechanised welding system by low-cost state feedback controller   Order a copy of this article
    by Andreyna Sárila Ramos Ferreira, Débora Debiaze De Paula, Paulo Jefferson Dias De Oliveira Evald, Rodrigo Zelir Azzolin 
    Abstract: Since welding is one of the most harmful activities in industry, robots and mechanised systems in this process are widely used. As a result, researches about autonomous and semi-autonomous welding systems have an important rule to reduce losses and improve welding quality. This work contributes to the velocity control of the displacement module of a linear semi-autonomous welding mechanised system. We propose to use a Pole Placement Control (PPC), which has a simple structure state feedback controller based on poles allocation, which can be applied on low-cost control platforms and use a reduced set of sensors. Experimental results, tested on a Bug-O Modular Drive System Linear Weaver, are presented to discuss the feasibility of the proposed control strategy.
    Keywords: state feedback control; pole placement control; poles allocation; linear welding robot.

  • Self-tuning fuzzy logic PID controller with a practical view to PEM fuel cell air supply system   Order a copy of this article
    by Mehdi Rakhtala 
    Abstract: The polymer electrolyte membrane fuel cell (PEMFC) is an appropriate candidate in renewable energy resources to using in vehicular, industrial and other applications. This research paper concentrates on the nonlinear model of the PEMFC system. The load fluctuations in the fuel cell stack affect the lifetime and cause fuel cell stack damage and ageing. So, a closed-loop control system is suggested to regulate the oxygen excess ratio at the desired value. In this paper, a self-tuning fuzzy logic PID (FPID) controller is suggested for an PEMFC air supply system because the fuel cell is a very severely nonlinear system. The oxygen excess ratio is regulated to a desired value by adjusting the air flow-rate. The control scope is to adjust the oxygen excess ratio in its operating range by controlling the compressor. The proposed FPID controller is a nonlinear and robust controller that ensures good efficiency around each equilibrium point under model uncertainties and avoids oxygen starvation during load fluctuations.
    Keywords: PEMFC; self-tuning; fuzzy logic PID; oxygen excess ratio; durability.

  • Robust energy-to-peak control for Markov jump system with multiple pure time delays   Order a copy of this article
    by Falu Weng, Huan Wang, Yuanchun Ding 
    Abstract: This paper investigates the robust energy-to-peak stability analysis and controller design for the Markov jump system with multiple pure time delays. The aim is to get some sufficient conditions such that the controlled system is asymptotically stable with a anti-disturbance performance. Firstly, according to the system transformation, the Markov jump multiple pure time delays system is transformed into a new description, which includes a non-time-delay item and some integral items. Secondly, according to Lyapunov stability theory and LMI technique, the sufficient theorems are achieved for the Markov jump multiple pure time delays system to have energy-to-peak stability and stabilisation. If those theorems are solvable, controllers can be obtained such that the controlled systems are stable and the peak values of the controlled outputs are constrained for any energy-bounded external disturbance inputs. Moreover, the uncertain cases are considered, and the robust stability conditions are achieved. Finally, examples are given, and the effectiveness of the obtained methods is illustrated.
    Keywords: pure multiple time delays; Markov jump; LMI; energy-to-peak control; uncertainty.

  • Nonlinear control and energy management of the hybrid fuel cell and battery power system   Order a copy of this article
    by Hassan El Fadil, Zakariae El Idrissi, Abdessamad Intidam, Aziz Rachid, Mohamed Koundi, Tasnime Bouanou 
    Abstract: This paper deals with the problem of controlling a hybrid energy storage system, used in hybrid electric vehicles. The system consists of a PEM fuel cell and batteries as sources and two DC-DC power converters. A nonlinear controller and an energy management system (EMS) are developed. Firstly, an appropriate nonlinear model of the studied system is elaborated. Then, a nonlinear controller is elaborated using Lyapunov theory to ensure the following objectives: i) tight DC-bus voltage regulation, ii) perfect tracking of the battery current to its reference, and iii) asymptotic stability of the closed-loop system. Secondly, using Bellman's principle of optimality, the EMS is designed to generate an optimal reference signal of the battery current. The objective is to share the load power between the fuel cell and the battery minimising the hydrogen consumption. It is shown, finally, using theoretical analysis and simulations, that the objectives of the nonlinear controller and the EMS are achieved whatever the used vehicle and the traction motor. Interestingly, the only used information on the traction part is the load current.
    Keywords: fuel cell; DC-DC power converter; battery; nonlinear control; energy management system; Lyapunov theory; Bellman's principle of optimality.

  • Modelling and experimental study on hierarchical throttling water distributor   Order a copy of this article
    by Yuhai Cui, Yongqiang Kong, Rui Xia 
    Abstract: In this paper, the pressure differential hierarchical throttle distributor is taken as the research object. First, the turbulence model of the flow field inside the water distributor is established. Then, using different nozzle assembly forms, the experiment is carried out at different flow rates to obtain the pressure and speed change curves. Then, using an offset long water nozzle hollow throttle core, the water nozzle is placed in different spatial positions, and an experimental study is carried out to obtain the pressure and speed change curves, and summarise the change rules therein. Finally, according to the experimental results, suggestions for effective evaluation and parameter optimisation are proposed. The research results can play a good guiding role in the design of a large-pressure differential hierarchical throttling water distributor.
    Keywords: water distributor; flow field; experimental research; optimisation.

  • Image semantic segmentation based on improved DeepLab V3 model   Order a copy of this article
    by Haifei Si, Zhen Shi, Xingliu Hu, Yizhi Wang, Chunping Yang 
    Abstract: To improve the image-segmentation speed based on the accuracy of a convolution neural network model, an improved DeepLab V3 network is proposed in this paper. The original feature extractor of DeepLab V3 is replaced with the lightweight network structure of MobileNet V2, and the original nonlinear activation function of a rectified linear unit is partially displaced by a new Swish activation function. Experimental results show that the improved DeepLab V3 network model can balance the segmentation accuracy and speed of the model better than the V3+ algorithm, which is the most accurate DeepLab network model till now. The running speed is improved significantly with a certain level of accuracy. In tests using different datasets, the running time decreased by 84% and 88.9%, and the model memory consumption decreased by approximately 96.6%. The improved DeepLab V3 network can adapt to deep-learning applications and satisfy their high-speed requirements.
    Keywords: deep learning; DeepLab V3 model; lightweight; depth-wise separable convolution; semantic segmentation.

  • Improvement and analysis of a mechanically adapted Lofstrand crutch model through bond graph modelling   Order a copy of this article
    by Rebeca Hannah Oliveira, Danilo Dos Santos Oliveira, Andrey Negreiros Pimenta, Ludmila Evangelista Dos Santos, Giselle De Oliveira Lima, Emerson Fachin-Martins, Danielle Brasil Barros Da Silva, Jackson Paz Bizerra De Souza, José Henrique De Oliveira, Suelia De Siqueira Rodrigues Fleury Rosa 
    Abstract: Lofstrand crutches are mobility devices applied temporarily during the rehabilitation process or permanently as an assistive device. As a permanent device, they have a deep impact on the body owing to the reactive force redistributed on the upper limbs. We present a review of the development and implementation of an innovative cushioning crutch-mounting device as well as a sensorial system for gathering feedback data. We propose a bond graph mathematical model to compare the traditional Lofstrand crutches with a modified Lofstrand crutch. Through state-space equations extracted from our model, we demonstrate a reduction in the resulting force through the introduction of the damping device on the crutch system. The simulation by the mathematical models demonstrated that the cushioning might incur effective minimisations on the upper limbs force redistribution, avoiding further movement disabilities for permanent users.
    Keywords: Lofstrand crutches; adapted Lofstrand crutches; bond graph modelling; rehabilitation; crutch mounting device; force sensor resistor; mechanical damping device; assisted gait.

  • Prediction and reduction of spatial transverse vibration of hoisting catenaries induced by drum winding in super-deep mine hoists   Order a copy of this article
    by Jiannan Yao, Yansong Ma, Chi Ma, Tong Xu, Xingming Xiao 
    Abstract: Spatial transverse vibration of hoisting catenaries excited by drum winding in super-deep mine hoists may result in the catenary whirling motion, which may cause disordered rope arrangement and the rope to jump out of the sheave groove. This paper focuses on predicting and reducing the spatial transverse vibrations of hoisting catenaries induced by drum winding. Firstly, the governing equations of spatial transverse vibration of a hoisting catenary and the rope tension have been derived and experimentally validated. Subsequently, according to the structure of the rope groove on the LeBus drum, the functions of the transverse and lateral excitation displacements at the drum end and the hoisting velocity have been precisely modelled and calculated. Numerical simulation indicates that large amplitude spatial vibration will be excited by drum winding and that the quasi-static rope tension can be employed to predict the spatial transverse vibration of the catenary. Eventually, a vibration isolated system is proposed to reduce the spatial transverse vibrations of a catenary, and numerical simulation is used to validate the feasibility. The paper will provide good technical support for the vibration suppression of hoisting catenaries in super-deep mine hoists.
    Keywords: super-deep mine hoist; catenary; spatial transverse vibration; vibration isolated system; vibration suppression.

  • Design and control of a bidirectional active balancing model for a lithium-ion battery pack   Order a copy of this article
    by Qiuting Wang, Wei Qi 
    Abstract: The performance of single cell and serial/parallel lithium-ion battery pack can be inconsistent, owing to deviation of the production process and the difference of application environment. It will easily lead to the decline of the overall capacity of the battery pack. In our study, an efficient bidirectional active balancing strategy based on duty ratio is proposed. The optimal solution of voltage value is obtained in each equalisation cycle. A model predictive control (MPC) algorithm is established to balance the SOC value of each cell. The bidirectional DC/DC converter is designed to transfer the energy between one cell and its adjacent cell. The experimental results indicate that our new model and balancing strategy can effectively reduce the voltage difference between different cells. It can overcome the shortcomings of traditional balancing strategies, such as low energy transfer efficiency, long equalisation time and unsuitability for large capacity battery packs. Besides, it avoids unnecessary energy transfer and reduces the balancing time by 31%.
    Keywords: lithium-ion battery; serial/parallel pack; bidirectional balancing circuit; predictive control; DC/DC converter; SOC.

  • Cooperative spectrum prediction algorithm based on overlapping alliance game   Order a copy of this article
    by Xin Wang, Wei Li, Yongfeng Chen, Li Dai 
    Abstract: In order to solve the problem of unsatisfactory accuracy of spectrum prediction in a network with multiple primary users, this paper proposes a cooperative spectrum prediction algorithm. The overlapping alliance game is introduced into spectrum prediction. The alliance structure with the highest accuracy of collaborative prediction is selected, and the result with the highest accuracy is obtained. In the experiment, three different collaborative prediction methods are compared and the effects of different parameter values on the simulation results are analysed. The results show that the proposed method has high prediction accuracy, adaptability and robustness.
    Keywords: spectrum prediction; cooperative spectrum prediction algorithm; overlapping alliance game.

  • Adaptive cubature quadrature filter for nonlinear state estimation   Order a copy of this article
    by Aritro Dey 
    Abstract: A new filtering algorithm is proposed for nonlinear state estimation where the measurement vector is a nonlinear function of system states and measurement noise. The proposed adaptive cubature quadrature filter demonstrably presents improved estimation performance in the situation where the measurement noise covariance remains unknown to the designer. The filter has been designed based on Bayesian filtering framework with cubature quadrature rule for approximation of Gaussian integral, and also incorporates an adaptation algorithm designed for auto-tuning of unknown measurement noise covariance. The adaptation algorithm, theoretically developed following Maximum Likelihood Estimation (MLE) for non-additive noise, is numerically stable as it secures the positive definiteness of adapted measurement noise covariance. The superiority of the proposed filter is demonstrated in simulation over its non-adaptive counterpart and the competing algorithms of adaptive nonlinear filters, with the help of some non-trivial case studies. Additionally, suitability of the proposed algorithm is validated for non-stationary measurement noise.
    Keywords: adaptation; cubature quadrature filter; maximum likelihood estimation; measurement noise covariance; non-additive noise; nonlinear filtering.

  • Distinguishability study of three-mass models for electromechanical motion systems   Order a copy of this article
    by Mathias Tantau, Christian Helmke, Lars Perner, Mark Wielitzka 
    Abstract: Physically motivated models of electromechanical motion systems are required in several applications related to control design and auto-tracking, model-based fault detection, feed-forward, and simply interpretation. However, attempts to create such models automatically via structure and parameter identification struggle with ambiguities regarding the correct internal structure of the model. Designing a reasonable set of candidate models is difficult, because it is not known which models are distinguishable and which are not. This paper gives a simple-to-use necessary condition for indistinguishability of multiple mass models as they are used to model the control-relevant features of motion systems. In an automated way, models are generated that can be created by considering elasticities at different positions in the mechanical structures. The condition is applied to these models for the case of three masses. In three examples it is shown that the criterion simplifies the subsequent structure and parameter identification considerably by reducing the number of possible models. For higher numbers of masses, however, it would become intractable.
    Keywords: indistinguishability analysis; multiple mass resonators; multiple mass models; electric drive trains; electromechanical motion systems; servo control systems; structure and parameter identification; model selection; model structure optimisation; transfer function type; poles and zeros; frequency domain; frequency response function.

  • Several structure pool based identification algorithms for ARX models: order and parameter estimation   Order a copy of this article
    by Jianwei Lu 
    Abstract: Several structure pool based identification algorithms are proposed for ARX models with unknown order in this study. Since the order of the ARX model is unknown, a structure pool that contains various different information products is provided, and then the gradient iterative and two-direction stochastic gradient algorithms are provided to estimate the order and the unknown parameters simultaneously. The proposed algorithms can be applied for systems with unknown orders and parameters, thus are more promising in engineering practice. A simulation example is used to validate the efficiency of the proposed algorithms.
    Keywords: order identification; gradient iterative algorithm; ARX model; two-direction stochastic gradient algorithm; parameter estimation; structure pool.

  • Disturbance rejection for a quadrotor using robust active force control with genetic algorithm   Order a copy of this article
    by Sherif I. Abdelmaksoud, Musa Mailah, Ayman M. Abdallah 
    Abstract: Among the various types of rotorcraft unmanned aerial vehicles (UAVs), the quadrotor is currently one of the most versatile flying machines. However, it is an under-actuated, highly non-linear coupling system. It is also sensitive to external disturbances and uncertainties while tracking certain paths, which can affect its performance and may cause undesirable movements that sometimes lead to the failure of the entire system. This work introduces an innovative hybrid control scheme for a quadrotor model to reject different forms of external disturbances while ensuring stability during trajectory tracking. The proposed control structure incorporates an active force control (AFC) strategy with a proportional-integral-derivative (PID) controller, tuned using the genetic algorithm (GA) method, known as the (PID-AFC-GA) scheme. In addition, a sensitivity analysis of the effect of using the partial-to-total output of the AFC signal was investigated. The hybrid PID-AFC-GA controller gives better disturbance rejection efficacy than the other proposed methods.
    Keywords: quadrotor control; Newton-Euler method; active force control; PID controller; genetic algorithm optimisation; disturbance rejection; trajectory tracking.

  • Frequency characteristics of a phase-optimised active disturbance rejection control   Order a copy of this article
    by Wei Wei, Pengfei Xia, Nan Chen, Min Zuo 
    Abstract: A linear extended state observer (LESO) can just estimate constant disturbances with no steady-state error. In order to improve the ability of an extended state observer (ESO) to estimate time-varying disturbances, a phase optimisation law (POL), which is of simple structure and easy to realise, is proposed. Based on the POL, both a phase-optimised extended state observer (POESO) and a phase-optimised active disturbance rejection control (POADRC) are proposed. Before and after introducing the POL, estimation errors, estimation phases, and ability of the ESO to estimate the total disturbance are analysed and compared. Results show that the estimated phase of the POESO is always ahead of the one of a LESO, and a POESO is able to estimate slope disturbances with zero steady-state error. Transfer functions of tracking, total disturbance and noise are also obtained. The ability of the active disturbance rejection control to cancel out the total disturbance or suppress noise, and stable regions in presence of the uncertain control gain and parameter are analysed and compared. Both frequency analyses and numerical results show that, compared with the linear active disturbance rejection control, the POADRC can estimate the time-varying disturbances and improve the closed-loop performance more effectively.
    Keywords: active disturbance rejection control; extended state observer; frequency characteristics; optimised phase.

  • Modelling and structure optimisation on throttle tube of pre-throttle water distributor   Order a copy of this article
    by Yuhai Cui, Rui Xia, Yongqiang Kong 
    Abstract: In this paper, taking an oilfield as the research object, the pre-throttle water distributor is tested and studied. Aiming at the pre-throttle water distributor, the flow field of throttle tubes with different circles and sizes is calculated, the pressure drop and velocity are compared and analysed, and the test results are drawn. According to the test results, the optimal pipe diameter and circle number selected under different pressure drops are determined. The research results can play a good guiding role in the design of the pre-throttle water distributor.
    Keywords: water distributor; throttle tube; pressure drop; flow rate.

  • Stability for thermo-elastic Bresse system of second sound with past history and delay term   Order a copy of this article
    by Khaled Zennir, Djamel Ouchenane, Abdelbaki Choucha 
    Abstract: In the present paper, a one-dimensional linear thermo-elastic system of Bresse type with past history and delay term is considered. We prove the well-posedness of the problem using the semigroup method. By using the energy method, we discuss the stability of the system for two cases. An exponential stability result of system (ref{TR1}) is obtained in the case where the propagation velocities are equal in equation of vertical displacement and the equation of system rotation angle in eqref{en1}. Furthermore, a result of algebraic stability is obtained in the case of the different propagation velocities in eqref{en}, where the initial data $E_2(0)$ is involved in the decay rate for the case.
    Keywords: Bresse system; thermo-elastic; past history; delay; asymptotic stability; energy method; semigroup method.

  • Roll angle dynamic control of unicycle robot using backstepping controller and sliding mode controller.   Order a copy of this article
    by Boutaina Elkinany, Mohammed Alfidi, Zakaria Chalh 
    Abstract: The unicycle robot is the most sophisticated and the newest mechanism used in the robotics industry regarding its high degree of mobility. It represents an unbalanced, non-holonomic system that can move and stand with only one wheel. Accordingly, it is the best platform for researchers to model and study stability. This paper focuses on the modelling of the unicycle robot using the Lagrangian dynamic formulation. Two nonlinear controllers are presented: the sliding mode and the backstepping controllers that were designed to control the roll angle. Both controllers were simulated and the results showed that the stabilisation of the roll angle can achieve a good performance and good robustness using the backstepping controller rather than the sliding mode controller.
    Keywords: unicycle robot; sliding mode controller; backstepping controller; stability; modelling; simulation; Lyapunov function.

  • Model predictive current control combined sliding mode speed control for PMSM drive system   Order a copy of this article
    by Qian Guo, Tianhong Pan 
    Abstract: This work deals with an improved Model Predictive Current Control Combined Sliding Mode Speed Control(SMC+MPC) method to reduce the tracking error of speed and current for permanent magnet synchronous motor (PMSM). Firstly, the establishment of the PMSM mathematical model in the synchronous rotating frame is introduced. Secondly, a cascade PMSM control system has been created. In this system, a sliding mode speed controller and a model predictive current controller are employed respectively to enhance the speed tracking accuracy and suppress the harmonic component of the three-phase currents. Finally, the schematic diagram of the proposed method and simulation results are provided. Moreover, sliding mode speed control combined with proportional-integral (PI) current control is simulated for comparison to prove the superiority of the proposed method.
    Keywords: model predictive current control; sliding mode speed control; permanent magnet synchronous motors.

  • Model predictive control for an industrial coal pulveriser   Order a copy of this article
    by Vini Dadiala, Jignesh Patel, Jayesh Barve 
    Abstract: The coal-pulveriser/coal mill is an important subsystem upstream of boilers in coal-based thermal power plants. The efficient boiler operations demand optimum combustion-air to coal-fuel ratio (AFR). In fact, a portion of (preheated) combustion air, called primary air, passes through the coal mill and carries pulverised coal to the boiler. The safe, efficient coal-mill operation is important and requires (1) safe temperature control of primary air-coal mixture inside/outlet of mill; (2) optimum primary air-to-fuel ratio (pAFR); (3) swift tracking of coal-flowrate setpoints to cater for variable power-load demands. In this paper, a multivariable Model Predictive Control (MPC) scheme is proposed for a specific industrial coal mill. Also, a simulation study is performed using a validated industrial coal-mill model, and the performance of the MPC scheme is compared with two other control schemes, industrial 2PI and prior published 3PI with selective control. The MPC outperforms the other two control schemes and provides better control performance, respects coal-mill operational constraints, and improves primary air-to-fuel ratio.
    Keywords: coal pulveriser; air-fuel ratio; model predictive control; primary air-fuel ratio; stochiometric AFR; 3PI with selective control; coal moisture; latent heat; sensible heat.

  • Computationally efficient model predictive control for quasi-Z source inverter based on Lyapunov function   Order a copy of this article
    by Minh-Khai Nguyen, Kim-Anh Nguyen, Thi-Thanh-Van Phan, Van Quang Binh Ngo 
    Abstract: This paper proposes a computationally efficient model predictive control strategy for the quasi-Z source inverter. Unlike the previous finite control set model predictive control method, besides the ability of computational cost reduction, the proposed method considers the stability of the closed-loop system in the control design. At each sampling period, only feasible switch control inputs that satisfy the stability condition derived from a control Lyapunov function are taken into account in the minimisation of the cost function. Therefore, the computation time of the optimisation problem is decreased compared with the previous algorithm. A comparison of the previous model predictive control method is investigated by Matlab software in various operating conditions of the system. The achieved results verify the benefit of the proposed approach for dealing with the stability and computational burden over the conventional method while maintaining high control performance.
    Keywords: quasi-Z source inverter; finite control set model predictive control; delay compensation; computational burden; control Lyapunov function.

  • Modal analysis and modelling approach for piezoelectric transducers based energy harvesting applications   Order a copy of this article
    by Nadjet Zioui, Aicha Mahmoudi 
    Abstract: Energy harvesting-based piezoelectric (PE) stress-strain has gained a huge buzz in recent years. Many academic researches and industrial efforts have been conducted in order to contribute to bringing new ways to harvest energy from mechanical machines' vibrations, road vehicles' interactions and human motion. Establishing a representative model for a system is a vital step in the process of design, control or operation of any system in engineering. This is more factual in the context of energy harvesting. A good knowledge of the harvesting element makes it possible to predict its behaviour, therefore the useful energy that can be harvested. In this paper, an assessment of the several modelling methodologies is established, with a specific focus on the dynamic behaviour of piezoelectric devices in the context of energy harvesting applications. Several papers related to the topic of modelling piezoelectric elements in the perspective of energy harvesting are presented with the purpose of discussing their forces and limitations. The paper proposes an approach of modelling the piezoelectric elements' dynamic operation. The approach considers a transfer function with parameters to be identified depending on the experimental spectral response of the element. This approach allows an enhanced comprehension of the element dynamic behaviour, including several dynamics that can possibly be omitted during the modelling process. Two cases of study are illustrated and concisely compared with the models in the literature in order to highlight the significance of specifying the validity set of the model.
    Keywords: energy harvesting; piezoelectric transducer; modal analysis; mathematical modelling; transfer function.

  • A new family of 9-D and 10-D hyperchaotic systems from the 8-D hyperchaotic Benkouider system, the bifurcation analysis of the 10-D hyperchaotic system, circuit design and an application to secure voice communication   Order a copy of this article
    by Khaled Benkouider, Toufik Bouden, Sundarapandian Vaidyanathan, Mustak E. Yalcin 
    Abstract: This work presents a new 10-D polynomial hyperchaotic system with eight positive Lyapunov exponents. We propose a family of new 9-D and 10-D hyperchaotic systems, which are derived from the 8-D hyperchaotic system (2020). With its eight positive Lyapunov exponents, the proposed 10-D hyperchaotic system generates a more complex behaviour than the existing systems, which makes it very useful in many fields of applications, especially in secure communication. Major properties of the new system are investigated using Lyapunov exponents, bifurcation diagrams, phase portraits, equilibrium points, Kaplan-Yorke dimension and multistability. In addition, an equivalent electronic circuit is implemented using Multisim software to validate the physical feasibility of the constructed 10-D hyperchaotic system. Finally, a new secure voice communication scheme is developed based on the chaotic masking approach and using all the complex hyperchaotic signals generated by the new 10-D hyperchaotic system.
    Keywords: chaos; hyperchaos; hyperchaotic systems; circuit design; secure communication.

  • Modelling of nonlinear dynamic stability in cylindrical grinding process   Order a copy of this article
    by Amon Gasagara 
    Abstract: The cylindrical grinding process is a complex phenomenon with several vibration excitation parameters that lead to oscillation of the grinding wheel and workpiece deflection. In this work, a new model of the cylindrical grinding process vibrations is developed to analyse a particular type of dynamic instability induced by the in-feed rate. The grinding wheel is modelled as a constant speed moving oscillator excited by the grinding forces to provide a time-varying excitation load to induce the workpiece deflection. The workpiece is regarded as a simply supported non-uniform Euler-Bernoulli beam. The numerical analysis is used to obtain the governing equations of the process dynamics. MATLAB is used to obtain the dynamic response of the process. The experiment is used to validate the model simulation results. The results of the tested grinding mode show that the dynamic stability of the process is benefitted at the in-feed rate of 0.01 mm/sec while reducing the grinding time.
    Keywords: cylindrical grinding process; in-feed rate; dynamic vibration response; moving oscillator; chatter vibrations.

  • An optimal control approach for hybrid motion/force control of coordinated multiple non-holonomic mobile manipulators using neural network   Order a copy of this article
    by Komal Rani, Naveen Kumar 
    Abstract: This paper presents an intelligent optimal control approach for motion/force control of cooperative multiple non-holonomic mobile robot manipulators carrying a single rigid object. Firstly, a combined model of multiple mobile manipulators and the object is obtained in terms of object coordinates. Using this model, a state-space form of error dynamics is derived for quadratic optimisation. Then, the explicit solution of Hamilton Jacobi Bellman (HJB) equation for optimal control is obtained using the Riccati equation. The linear optimal control, neural network and adaptive bound are used to design the proposed controller. It is shown that the uncertainties of the system are compensated using radial basis function neural network and adaptive compensator. The radial basis function neural network approximates the unknown dynamics and the adaptive compensator estimates the bounds on the neural network approximation error and the unstructured uncertainties of the system. The asymptotic stability of the closed-loop system is demonstrated using Lyapunov stability analysis and optimal control theory. Finally, the proposed control approach are verified in a comparative manner through simulation results with two identical mobile manipulators grasping the single rigid object.
    Keywords: multiple mobile manipulators; optimal control; Hamilton Jacobi Bellman optimisation; motion/force control; RBF neural network; adaptive compensator; asymptotic stability.

  • Differentially flat trajectory generation and controller design for a quadrotor UAV   Order a copy of this article
    by Arindam Singha, Anjan Kumar Ray, Arun Baran Samaddar 
    Abstract: A control strategy of differentially flat trajectory generation and a backstepping controller for tracking the desired trajectory are developed for a quadrotor Unmanned Aerial Vehicle (UAV). A globally smooth trajectory is generated through multiple waypoints, which are at different planes. To show the effectiveness of the trajectory generation method, four different shapes of trajectories are generated using different numbers of waypoints. Simulation studies have shown that the proposed paradigm is able to generate smooth trajectories using multiple waypoints. Along with that, the quadrotor UAV has successfully tracked the desired trajectories by using the proposed controller. The proposed controller is also validated with constant and variable desired yaw angles. The robustness of the proposed controller is validated in the presence of external disturbances in the system control input. The proposed controller is also compared with other controllers and shows satisfactory performances.
    Keywords: Andrews' curve; backstepping controller; differential flatness; trajectory generation; trajectory tracking; quadrotor UAV.

  • Modified augmented fractional order control schemes for cart inverted pendulum using constrained Luus-Jaakola optimisation   Order a copy of this article
    by Deep Mukherjee, G. Lloyed Raja, Palash Kundu, Apurba Ghosh 
    Abstract: Since the upright position of an inverted pendulum system is an unstable equilibrium, it is extremely challenging to control. Fractional order based control schemes are becoming increasingly popular in stabilising an unstable system and achieving satisfactory closed-loop performance. Therefore, a novel combination of fractional order Lyapunov (FOLyapunov) rule and fractional order proportional integral (FOPI)/two-degrees of freedom FOPI (2DOF-FOPI) controller is proposed to tackle this problem. Parameters of FOPI/2DOF-FOPI controllers are obtained using multi-objective constrained the Luus-Jaakola multipass optimisation method. Comparative simulation studies are carried out with a direct synthesis based PID control scheme, combined with fractional order Massachusetts Institute of Technology (FOMIT) rule augmented with FOPI/2DOF-FOPI controllers using a mathematical model of inverted pendulum. It is evident that the proposed combination of FOLyapunov method and FOPI/2DOF-FOPI controllers outperforms the other schemes.
    Keywords: inverted pendulum; MRAC; fractional calculus; MIT rule; FOMIT rule; FOPI; 2DOF-FOPI; Luus-Jaakola algorithm; FOLyapunov stability rule.

  • H model reduction of discrete-time 2D T-S fuzzy systems in finite frequency ranges   Order a copy of this article
    by Abderrahim El-Amrani 
    Abstract: This paper deals with the problem of H model reduction for two-dimensional (2D) discrete Takagi-Sugeno (T-S) fuzzy systems described by the Fornasini-Marchesini local state-space (FM LSS) model, over finite frequency (FF) domain. The problem to be solved in the paper is to find a reduced-order model such that the approximation error system is asymptotically stable, which is able to approximate the original T-S fuzzy system with comparatively small and minimised H performance when frequency ranges of noises are known beforehand. Via the use of the generalised Kalman Yakubovich Popov (gKYP) lemma, new design conditions guaranteeing the FF H model reduction are established in terms of linear matrix inequalities. To highlight the effectiveness of the proposed H model reduction design, a numerical example is given.
    Keywords: multidimensional systems; finite frequency H∞; model reduction; T-S fuzzy systems.

  • Social spider optimisation based identification and optimal control of fractional order system   Order a copy of this article
    by Sandip Mehta, Dipak Adhyaru 
    Abstract: Fractional order derivatives and integrals are infinite-dimensional operators and non-local in time. Currently, the researchers are working on the solution of the fractional optimal control problem using some approximation and numerical analysis. In this paper, a social spider-based constrained optimisation method is proposed to control the fractional order system. An effort has been made to translate the fractional optimal control problem to the standard unity feedback system. A multi Simpson method has been used to solve the integration of the performance function. The proposed method has not used any matrix computation and it has been demonstrated that it is easier to implement the FOCP (fractional order optimal control) method on the given hardware. Along with the optimal control, a simple identification technique is proposed for the fractional order system. The optimal controller has been designed using computational intelligence techniques. The error analysis and the performance analysis have been carried out for the proposed methods.
    Keywords: fractional order system; SSO-C; FOCP; metaheuristic algorithms.

  • Optimal fractional order control for nonlinear systems represented by the Euler-Lagrange formulation   Order a copy of this article
    by Ahmad Taher Azar, Fernando E. Serrano, Nashwa Ahmad Kamal 
    Abstract: In this paper, a novel control strategy is shown for the control of fractional order systems established in the Euler-Lagrange formulation. This strategy is based on the design of an optimal controller considering a fractional order system based in the Euler-Lagrange formulation because this allows more degrees of freedom in the system establishment and the optimal controller design. The design procedure consists of establishing a performance index and then, by finding the gradient of this index, an optimal control law is obtained with the initial and final conditions of the system. It is important to note that there are a limited number of studies related to this topic found in the literature. Finally, in order to test the theoretical results obtained in this work, a numerical example that consists of the stabilisation of a two-links robotic manipulator is shown.
    Keywords: optimal fractional order control; fractional order systems; optimal control; Lagrangian systems.

  • Feature pair pyramid detector for small product defect detection   Order a copy of this article
    by Zihao Huang, Hong Xiao, Tao Wang, Junhao Zhou 
    Abstract: There are many object detection algorithms that have performed well on public datasets, and they can be used in product defect detection. But there are still many details, which can affect the detection performance of actual product defect detection, that need to be optimised. In this paper, we design a defect detector, called feature pair pyramid (FPP) detector, and optimise it for specific industrial application using three methods. Then we use FPP detector to detect defects of metal can products of an enterprise. The experiment results show that our FPP detector is more effective in detecting small size defects. The performance (AP@0.5) of our detector is better than current state-of-the-art detectors.
    Keywords: defect detection; small object detection; feature pair pyramid; one-stage object detector; Resnet; k-means; anchor box.

  • Assessing the feasibility of underwater vehicle controllers in underactuated hovercraft via simulations   Order a copy of this article
    by Przemyslaw Herman 
    Abstract: The paper presents a comparison of several selected trajectory tracking controllers used for an underactuated hovercraft. The aim of the study is to check if algorithms that have proved to be effective for another class of vehicles can be adapted to control a hovercraft. In order to compare the effectiveness of the controllers, one that is exclusively designed to control the hovercraft and three others that are suitable for the control of underactuated underwater vehicles were examined. This study also proposes a methodology for simulation analysis of control algorithms. The initial simulation tests demonstrated on the 3-DOF hovercraft model show the results that can be obtained by using each control algorithm under the proposed assumptions.
    Keywords: underactuated hovercraft; nonlinear control; trajectory tracking; simulation.

  • Position tracking and balancing control of ball balancer system using intelligent controllers   Order a copy of this article
    by Ankita Varshney, Bharat Bhushan, Rupam Singh 
    Abstract: This paper develops an intelligent control approach for achieving the nonlinear control of a two degrees of freedom (2DoF) ball balancer system. The ball balancer system provides an example of an inherently unstable and underactuated electromechanical system that can be used to realise the problem of position tracking and balancing control in robotic systems. Besides, intelligent control takes into consideration the system characteristics and parameters and incorporates the heuristic knowledge and a human logical approach to best train the controller for achieving the desired control task. In this research, the robustness of the intelligent controller is realised by developing an adaptive neuro-fuzzy inference system (ANFIS), which is applied to the ball balancer system to achieve position and balancing control. The numerical simulations are carried out using the first-principles method to perform the system modelling, design, and development of the control strategy for a two-dimensional ball balancer system. The performance of the proposed controller is assessed in terms of the time domain characteristics, and a comparative study is done to demonstrate the superiority of intelligent control techniques over classical control techniques.
    Keywords: adaptive neuro-fuzzy inference system; artificial neural network controller; ball balancer system; intelligent controller.

  • Track planning of an multi-rotor unmanned aerial vehicle in a complex environment space   Order a copy of this article
    by Yue Chu, Li Ying Yang, Zhong Hua Han 
    Abstract: Aiming at the dynamic track planning problem of a multi-rotor UAV in a complex environment space, this paper proposes a high-dimensionality-reduced space environment modelling method. In this way, the complexity of the environment model will be reduced and the planning efficiency will be improved. In addition, the paper proposes an improved artificial potential field (APF) method. First, obtain overall environmental information through the A* algorithm, and optimise the global path nodes. Then, improve the potential function of the APF method, and add the attraction of the global path to the UAV, so that it can guide the UAV movement smoothly. By analysing the simulation results, it can be found that this method can make up for the shortcomings of the APF method in path guidance to a certain extent. The effective combination of the two algorithms improves the UAV's path planning ability in complex environments.
    Keywords: environment modelling; track planning; A* algorithm; APF; optimised path nodes.

  • Trajectory tracking for mobile manipulator based on nonlinear active disturbance rejection control   Order a copy of this article
    by Mhmed Algrnaodi, Maarouf Saad, Mohamad Saad, Raouf Fareh, Abdelkrim Brahmi 
    Abstract: This paper designs a nonlinear active disturbance rejection control (ADRC) to solve the trajectory tracking problem of a mobile manipulator (MM) in the presence of parameter uncertainties and nonlinear dynamics coupling effects of the MM system. The control scheme consists of a nonlinear extended state observer (NESO) and a nonlinear proportional derivative (PD) controller. Based on the Lagrange formulation, a dynamical model of the MM is formulated, where external disturbances and modelling uncertainties are assumed to be part of the total disturbance, which is estimated with an observer and rejected online in the control law. Since the proposed controller cannot be performed unless the full transformed state vector of the system model is available, an NESO is designed to estimate the transformed state vector as well as the uncertainties. The nonlinear PD controller uses the state estimated by the NESO, and the effect of uncertainties is cancelled online by the control input. Experimental results of the MM proposed tracking controller show its validity and efficiency.
    Keywords: active disturbance rejection control; mobile manipulator; modelling uncertainty; external disturbances; nonlinear extended state observer.

  • Real-time system identification of an unmanned quadcopter system using fully tuned radial basis function neural networks   Order a copy of this article
    by Mohammad Fahmi Pairan, Syariful Syafiq Shamsudin, Mohd Fauzi Yaakub, Mohd Shazlan Mohd Anwar 
    Abstract: In this paper, we present the performance analysis of a fully tuned neural network trained with the Extended Minimal Resource Allocating Network (EMRAN) algorithm for real-time identification of a quadcopter. Radial basis function (RBF) network based on system identification can be used as an alternative technique for quadcopter modelling. The number of neurons in the RBF are typically determined by trial and error approach. In order to prevent the neurons and network parameters selection dilemma, RBF with EMRAN recursive training algorithm is proposed. This automatic tuning algorithm will implement the network growing and pruning method to add or eliminate neurons in the current network. The EMRANs performance is compared with the Minimal Resource Allocating Network (MRAN) training for 1000 input-output pair untrained attitude data. EMRAN uses the winner neuron strategy to reduce training time for large neuron size as much as 88 hidden neurons. The results indicate that the EMRAN algorithm produces faster mean training time, around 4.16 ms compared with MRAN at 5.89 ms, with a slight reduction in prediction accuracy. The proposed model can predict the attitude of a quadcopter using untrained data.
    Keywords: quadcopter; system identification; neural network; fully tuned neural network; radial basis function.

  • An intelligent online detection approach based on big data for mechanical properties of hot-rolled strip   Order a copy of this article
    by Jinxiang Chen, Ziming Fan 
    Abstract: An LightGBM prediction model based on big data is presented in order to online detect the mechanical properties of hot-rolled strip, which can achieve greater accuracy than both the existing prediction approaches and hardware detection method for the local strips. A dataset of mechanical properties of hot-rolled strip is constructed firstly by collecting a steel plant's hot-rolled process control parameters, which includes 17,000 samples, and every sample contains 17 input characteristics and three output mechanical property parameters. Based on the dataset, an LightGBM intelligent prediction model is established and trained to predict the three mechanical properties of the hot-rolled strip steels. A 17,000 dataset of hot rolling mill is used to verify the effectiveness of the model. Results show that the prediction accuracies for tensile strength, compressive strength and elongation are 0.99971, 0.99835, and 0.99631, respectively. Especially, the prediction accuracy for elongation is higher than the existing methods.
    Keywords: intelligent prediction; LightGBM; hot-rolled strip; machine learning; big data analysis; steel mechanical properties.

  • Modelling and optimised gait planning of biped robots with different leg mechanisms   Order a copy of this article
    by Behnam Dadashzadeh, Akbar Allahverdizadeh, Mehdi Azhdarzadeh 
    Abstract: Biped robots with point feet demonstrate faster gaits and more natural dynamics, although planning optimal mechanisms and gaits and designing stable control strategies for them is difficult. This research focuses on modelling and gait generation optimisation of four different real biped models that include practical extended models of the theoretical SLIP and compass gait as a novelty of the work. All of the models have point feet, their torso angle is constrained, and they move in the sagittal plane. The first model is a kneed biped model without spring, which is a five-rigid-link robot with four actuators in its hips and knees. The second model, a kneed biped model with springs in shins, is very similar to the first model, but its shins have linear springs. These springs make the system underactuated and their passive vibration makes calculations and gait generation very difficult. The third model is a semi-telescopic springy biped model. For this robot in the single support phase of walking, the weight-bearing springy stance leg is straight and the other leg bends its knee, swings forward, and then becomes straight and hits the ground. In the double support phase, both legs are aligned with springy telescopic joints. In this model, the existence of leg springs increases the cost of transport and gait error. For the fourth model, the semi-compass gait with kneed swing leg, in the single support phase, the knee of the stance leg stays straight, and the swing leg bends its knee to clear the ground, then it becomes straight and hits the ground. Dynamic equations of the different phases are combined to create a dynamic model of a full walking gait. In the following step, optimisation parameters, objective functions and constraints are presented, and successive stages of optimisation are completed to find the optimal gaits. The efficiency of the gaits and required motor torques for the optimal gait of each model are illustrated.
    Keywords: biped robot; walking; modelling; gait optimisation.

  • A new super-twisting sliding mode control based direct instantaneous power control of PWM-rectifier connected to grid   Order a copy of this article
    by Arezki Fekik, Hakim Denoun, Mohamed Lamine Hamida, Sundarapandian Vaidyanathan, Nacera Yassa 
    Abstract: A new super-twisting sliding mode control (STSMC) based direct instantaneous power control (DPC) of PWM-recti er connected to grid is studied in this paper. The new STSMC-DPC scheme uses instantaneous power controllers. The new scheme does not use current controllers as with traditional vector control. The two regulators possess a design parameter that facilitates to adjust their behaviour between a linear operation of the PI type and a behaviour in conventional sliding mode with constant gain. Our tests demonstrate that STSMC-DPC shows a robust behaviour and that it functions without chattering in steady state as in a classical regulator. The results obtained are very relevant and satisfactory for the control of the PWM converter without sensor, in terms of the reduction of the chattering as well as an operation under a power factor and having a low THD of the short absorbed and uncoupled control of the instantaneous powers.
    Keywords: direct power control; sliding mode control; super-twisting SMC; rectifier; converter; regulator; robust control; power factor; PWM; SVM; THD; UPF.

  • Combined control strategies for performance enhancement of a wind energy conversion system based PMSG   Order a copy of this article
    by Youssef Errami, Abdellatif Obbadi, Smail Sahnoun 
    Abstract: In this paper, an analysis of a Wind Farm System (WFS) based on Permanent Magnet Synchronous Generator (PMSG) under Sliding Mode Control (SMC) and Vector Control Approach (VCA) gives the basis for combining outstanding features of the two control strategies into a reliable and efficient control system to provide enhanced WFS performance. The system contains two PMSGs connected to a common dc-bus system through rectifiers. The dc-bus is connected to the power grid through Five-Level Neutral Point Clamped Voltage Source Converter (5L-NPC-VSC). The main objective of this control is to regulate the velocities of the PMSGs with Maximum Power Point Tracking (MPPT) for the complete functioning regions of a wind turbine system. The proposed control techniques are based on Sliding Mode Approach (SMA) and Vector Control (VC) to achieve the MPPT, to keep the dc link voltage constant and to the control active and reactive powers. The stability of the regulators is obtained using Lyapunov analysis. The simulation results in Matlab/Simulink are presented to verify the effectiveness of the proposed combined control strategies.
    Keywords: wind power generation system; PMSG; NPC; sliding mode control; VCA; nonlinear control; electric network connection.

  • An offline predictive control with ellipsoid invariant set for time-variant system   Order a copy of this article
    by Rosana Rego, Marcus Costa 
    Abstract: A new formulation is proposed to address constrained robust model predictive control (MPC) offline scheme for uncertain systems based on a quasi-min-max algorithm with Linear Matrix Inequalities (LMI). The approach involves an offline design of a robust state observer. The proposed offline MPC is applied to a three-state switching cell (3SSC) boost converter. The converter analyses the ellipsoids of stability and its projections in the closed loop impulse response. A comparison is made between the online and offline performances of the algorithm to show the efficiency of the offline proposed approach. The results show that the offline formulation obtained good results and ensures the stability of the converter.
    Keywords: model predictive control; boost converter; linear matrix inequalities; uncertainties.

  • Adaptive cubature quadrature Kalman filter for nonlinear state estimation with one-step randomly delayed measurements   Order a copy of this article
    by Sri Mannarayana Poluri, Aritro Dey 
    Abstract: This paper proposes an adaptive Cubature Quadrature Kalman filter for one-step randomly delayed measurements (ACQKFRD), which is capable of handling critical situations when the system suffers from unknown parameter variations. The proposed filter automatically tunes the unknown element of process noise covariance related to the uncertain parameter by using an adaptation algorithm based on maximum-likelihood estimation. The proposed filter has been validated in simulation with the help of two significant nonlinear case studies. Monte Carlo (MC) simulation demonstrates the efficacy and consistency of the proposed filter.
    Keywords: adaptation; aircraft tracking; Bayesian filter; cubature quadrature Kalman filter; one-step randomly delayed measurement; nonlinear filtering; process noise covariance.

  • Brain MRI Monitoring Approach of Lesion Progress in Multiple Sclerosis using Active Contours
    by Chaima DACHRAOUI, Aymen MOUELHI, Salam LABIDI 
    Abstract: Magnetic Resonance Imaging is considered as powerful tool for no-invasive diagnosis and description of brain pathologies. This is particularly the case of Multiple Sclerosis, for monitoring this disease and its treatment. Multiple sclerosis is an autoimmune inflammatory disease of the central nervous system in which clinical markers are used today for diagnosis and for therapeutic evaluation. In order to automate a long and hard process for the clinician, we propose a semi-automatic segmentation approach of multi sclerosis lesions in longitudinal MRI sequences. We use firstly a robust algorithm that allows spatiotemporal extraction of these lesions by the geodesic active contour model. Then, we recommend an original scheme based on an automated image registration technique for evaluating the evolution of the detected lesions. A quantitative study is presented in this paper to validate our results using the “BrainWeb” simulator, MICCAI2008 and MICCAI2016. Very promising results are obtained in the case of clinical data. Our research was tested on 10 typical and atypical synthetic motifs and 1000 MR-Images from different centers which contain healthy brain and brain suffering from multiple sclerosis disease.
    Keywords: Multiple sclerosis lesions, brain MRI, segmentation approach, evolution, follow-up

  • Life prediction method of automobile electromagnetic relay based on dual self-attention one-dimensional convolutional neural network   Order a copy of this article
    by Zhan Li Zhan, Lan Chao Lan, Zhao Hao Zhao, Guo Jifeng Guo 
    Abstract: The automobile electromagnetic relay is an electrical component that is widely used in the field of automobile manufacturing. It plays an important role in the control, regulation, and protection of low-voltage electrical systems of vehicles. Because of their frequent use and relatively poor working environment, they may fail and be damaged after being corroded by sand, dust, oil, and other pollutants over a long duration. Consequently, a method for predicting the life of automotive relays based on dual self-attention convolutional neural networks is proposed. The network is composed of global and local time series convolution. Two convolutional neural networks are connected in parallel to extract the global and local features of the automotive electromagnetic relay life data, and the extracted data features are determined to predict the life of the relay. Finally, the root mean square error was used to evaluate the prediction results.
    Keywords: convolutional neural network; automotive electromagnetic relay; life prediction; root mean square error; self-attention.

  • Modeling and Intelligent Optimization for Hot-rolling Roll Changes of High-speed Tool Steel Rod and Wire
    by Jinxiang Chen, Yilan Yin, Can Li, Yanjin Chen, Jinjun Song, Yimin Shi 
    Abstract: The production of high-speed tool steel rod and wire is characterized by multiple varieties and small batches. The optimization of roll change times of hot continuous rolling mill must be considered during production scheduling. Otherwise,frequent roll changes will lead to the decrease of work efficiency and the huge increase of production cost. In order to solve the above problems, an optimal model with multi-constraints is established, and a HACA to optimize the number of roll changes is presented by considering various factors of the hot continuous rolling and roll changing process in this paper. By comparing and analyzing the single model GA, ACA, and empirical method in a special steel factory, it can be found that the optimized roll change times are better than the original empirical roll change times, which improves the production efficiency and reduces the labor cost.
    Keywords: High-speed tool steel rod and wire; hot continuous rolling; roll changes optimization; ant colony algorithm; genetic algorithm.

  • Modelling and analysis of aesthetic characteristics using digital technology in the artworks   Order a copy of this article
    by Yi Song 
    Abstract: In the 1980s, digital technology began to be fully integrated into the field of art and combined with art in various forms. As an active, cross-innovative and extensively permeable technical factor, it supports the diversity of artistic creation and gradually derives new artistic languages, forms as well as aesthetic styles. Meanwhile, as a key tool to be intervened in the artistic process, digital technology not only expands peoples customary aesthetic experience, but also provides rich media for the manifestation forms and means of art, and then the artistic aesthetics is updated accordingly. From the perspective of aesthetics, the digital-technology-based aesthetic process no longer focuses only on the aesthetic object of material attributes. The creative process reflects a relatively strong integrity and systematisation, and pays attention to peoples new relationships in artistic activities, such as process participation, behavior triggering, interactive experience and so on. The identity of aesthetic subject tends to be fuzzy. It focuses on the empathy and interaction in aesthetic process. The aesthetic distance becomes closer and produces a strong sense of immersion, triggering a practical reflection. Aesthetic behavior becomes more convenient. The aesthetic trend constantly evolves, and the continuity and uncertainty coexist. In this paper, through analysing the influence of digital technology on art and based on the typical art form of digital technology, case analysis and comparative study are used to understand the aesthetic process of digital aesthetics, summarise the basic characteristics of digital aesthetics while providing a cognitive framework, reflect on the future possibility of digital aesthetics, and provide the reference for people to treat the aesthetic value of digital aesthetics.
    Keywords: digital technology; digital aesthetics; characteristic analysis.

  • Sparse Gaussian Process Regression in Real-time Myoelectric Control
    by Myong Chol Jung, Rifai Chai, Jinchuan Zheng, Hung Nguyen 
    Abstract: In myoelectric control, nonlinear regression models, Gaussian process in specific, have shown promising accuracy in estimation, but no study has been conducted to evaluate the real-time performance of Gaussian process regression. In this work, the real-time performance of sparse Gaussian process regression is evaluated with 17 able-bodied subjects. Unlike the existing training methods, in which training protocols are strictly pre-determined, a novel training method is proposed. The subjects' real-time performance adjusts training time and the number of training samples. While the majority of subjects showed similar learning rates, there was a significant difference between a few subjects (p<0.05). As a result of real-time performance, the subjects completed 97% of the average tasks and achieved 80% path efficiency comparable to existing methods.
    Keywords: sparse Gaussian process regression; GP; regression; real time myoelectric control; real time control; myoelectric control; nonlinear regression; electromyography; EMG; human-computer interface; rehabilitation engineering.

  • Analysis of topological features in spatial distribution pattern using GIS and remote sensing   Order a copy of this article
    by Bingxin Li, Anbang Yu, Tong Liu, Sulin Guo 
    Abstract: This research offers a creative perspective from topological features for coordinated development between rural residents and the environment, as well as the intensive use of rural lands in Jilin province, China, so as to relief Jilin province from the bottleneck stage of the urbanisation process. Using the data of Landsat8 remote sensing image and four-dimensional graph in 2018, the study analysed the distribution pattern of rural settlements of Jilin province according to its topographical features from the characteristics of density and scale perspective, by taking Antu from the east, Dehui from the middle and the Tongyu from the west as the typical county unit as research objects, with the help of human-computer interaction interpretation and GIS-based spatial analysis method from the influencing factors perspective for the first time. It is found that the rural settlement was in a radiating spatial distribution pattern along Ha-Chang urbanisation development belt on the whole, and its density shows central > East > West. Though the West had poor density, it had a large scale of rural settlement, which showed great potential in improving the urbanisation development of Jilin province. The spatial distribution pattern of rural settlements is obviously affected by a radiation effect from the road system and an aggregation effect of orchard fields. The eastern and western rural settlement distribution patterns were mainly affected by the road and water system from the environmental aspect, as well as the intensive orchard fields land use from the production aspect. The central region was mainly affected by the slope grade and road system from the environmental aspect, as well as the upland use from the production aspect.
    Keywords: rural settlement; GIS/RS analysis method; spatial distribution; topological features.

  • The factor impact to the development of prefabricated construction industry chain based on structural equation models   Order a copy of this article
    by Yun Cui Fan, Dan Dan Chen 
    Abstract: The development of prefabricated construction is an important direction for the transformation and upgrading of the construction industry, and the prefabricated construction industry chain is the foundation for the stable development of the prefabricated construction industry. Based on the theory of industry chain, this paper studies the factor impact to the prefabricated construction industry chain, and analyses the factors influencing the development of the prefabricated construction industry chain through the structural equation models. The results show the five influencing factors of enterprise participation willingness, enterprise capability, inter-enterprise coupling degree, structure level and external environment, which have significant positive impacts on the development of the prefabricated construction industry chain. Therefore, it is necessary to promote the healthy and stable development of the prefabricated construction industry chain from the aspects of enhancing enterprises' participation willingness, improving enterprises' capabilities, strengthening the coupling ability between enterprises, optimising the structure of the industry chain, and creating a good external environment.
    Keywords: prefabricated construction; industry chain; influencing factor; structural equation models.

  • Tutorial on robotic olfaction via gas-sensitive UAV: technologies and methodologies   Order a copy of this article
    by Lei Cheng, Zhihao Cai, Qingxue Zeng, Jialiang Zhong, Yuao Li 
    Abstract: When used in a wide range of environments for sniffing tasks, gas-sensitive drones will perform better than common ground-based mobile robots owing to their flexibility. In recent years, with the improvement of various related theories, gas-sensitive unmanned aerial vehicles (UAV) have become a hot research direction. Generally speaking, gas-sensitive UAV platform consists of electronic nose and commercial UAV, which can be divided into different application directions according to the configuration of electronic nose module. The research on its application mainly focuses on gas localisation and gas distribution mapping. In this paper, the design and application of gas-sensitive UAV are reviewed, the electronic nose applicable to gas-sensitive UAV is summarised, and the design methods, existing problems and its solutions of gas-sensitive UAV are introduced. After that, the research on gas localisation and gas distribution mapping is summarised and analysed, and the possible research directions in the future are proposed.
    Keywords: robotic olfaction; gas-sensitive UAV; gas-localisation methods; gas mapping methods.

  • Adaptive deep neural network tracking controller augmented using only one-neuron hidden layers for nonlinear systems subject to high constraints and unknown uncertainties   Order a copy of this article
    by Hamou Ait Abbas 
    Abstract: A new control strategy, adaptive tracking controller augmented using deep learning hybrid method, is proposed in the current paper to achieve excellent tracking performances of nonlinear systems in the presence of structured and unstructured uncertainties. First, the designed controller employs feedback linearisation control (FLC) to linearise the partially known NLS, then the dynamic compensator (Dcom) is involved to stabilise the linearised system. However, conventional controllers suffer from limitations due to the presence of these high uncertainties. The main objective of the current paper is to demonstrate the feasibility of applying deep learning (DL) algorithm as an approximator for neglected dynamics and uncertain parameters that often exist in NLSs. Notice that the training process of the designed deep neural network (DNN) algorithm consists of an unsupervised pretraining (UPT) process and a supervised fine-tuning (SFT) process. Furthermore, the performed input information of the Dcom is used as input data and the term of uncertainties (inversion error) as a target of the learning algorithm (LA). Thus, the key idea of the developed adaptive FLC augmented using DNN is to both replace the conventional controller Dcom and compensate adaptively the effect of modelling errors and parametric uncertainties for highly uncertain NLSs. Notice that the weight adaptation rule of the DNN is derived from the Lyapunov stability analysis, which ensures the boundedness of the error signals of the studied system. Simulations of the proposed adaptive controller based DNN are conducted then compared with the Dcom without DNN, PI controller, and adaptive controller based SHLNN to demonstrate its practical potential. Furthermore, both the feasibility and efficiency of involving DL in the control area have been successfully confirmed through a robustness test.
    Keywords: nonlinear systems; unmodelled dynamics; parametric uncertainty; feedback linearisation control; dynamic compensator; neural network; deep learning; deep neural network; auto-encoder; stacked auto-encoder; unsupervised pretraining process; supervised fine-tuning process; hidden layer; layer-wise non-supervised learning algorithm; backpropagation; adaptive control; stability analysis; Lyapunov direct method; robustness test.

  • Model-based fault tolerant control and fault isolation through a bipartite graph approach   Order a copy of this article
    by Seyed Mohamad Kargar 
    Abstract: This paper presents an integrated fault detection and diagnosis (FDD) and fault-tolerant control (FTC) approach. The fault is detected and transmitted to the fault-tolerant control block, where a predefined bank of controllers is designed based on the quasi model predictive control approach. A bipartite graph of system equations, variables, and faults is introduced to detect the faults. Upon a fault detection and based on the fault detection and diagnosis block's information, the controller is switched to the appropriate mode. This proposed fault detection approach is subject to structural analysis. No hardware is necessary for this proposed approach, which is considered as its advantage. This approach is applicable without having a deep knowledge of the physical system. The contribution of this paper is twofold. First, the proposed integrated FDD/FTC can simultaneously detect and diagnose the faults. Moreover, the proposed FTC block guarantees the stability of the closed-loop system. The simulation results indicate that this approach accurately detects and isolates the faults. The fault-tolerant controller preserves the stability and performance of the system upon fault occurrence.
    Keywords: fault-tolerant control; fault detection; model predictive control; bipartite graph; Dulmage-Mendelsohn decomposition; residual.

  • Modelling influence of big data analytic capability on enterprise performance: mediating effect of strategic flexibility   Order a copy of this article
    by Hua Zhang, Ligang Liu, Hongji Yang 
    Abstract: It is undeniable that the technological storm brought by big data is transforming our life, work and thinking with the rapid development of information technology and internet applications. Nowadays, the development of big data has gradually moved from the initial stage of hot speculation to the practical stage. Many researchers and entrepreneurs have begun to pay attention to the important impact of big data analytic capability on enterprise performance. In this paper, a large-scale questionnaire survey was conducted among over 420 employees of 370 enterprises in the major economic circles of China, and 223 valid samples were obtained. Through the mediating regression analysis and moderating regression analysis using SPSS 23.0 and AMOS 24.0, the paper found that big data analytic capability has a significant positive influence on corporate performance, and that strategic flexibility plays a mediating effect on it. Environmental uncertainty has a positive moderating effect on the path joining big data analytic capability and strategic flexibility and the path joining strategic flexibility and enterprise performance.
    Keywords: big data analytic capability; strategic flexibility; corporate performance; environmental uncertainty.

  • Disturbance Rejection Decoupling Control for A Wastewater Treatment Process
    by Wei Wei 
    Abstract: Concentrations of the dissolved oxygen (DO) and nitrate nitrogen (NN) directly affect the effluent quality. Keeping those concentrations in a desired level is critical in a wastewater treatment process. However, numerous undesirable factors as well as couplings between DO and NN challenge keeping concentration of both DO and NN in a desired level. To achieve satisfactory performance, rather than model those issues accurately, view them to be disturbances, a disturbance rejection control (DRC) is designed. By estimating those disturbances in real time, couplings are addressed effectively, and robustness of the closed-loop system is also promoted. Numerical results based on the Benchmark Simulation Model No.1 (BSM1) shows that the DRC is able to reject the disturbance satisfactorily and meet the control requirements. It may be a practical and feasible wastewater treatment control approach.
    Keywords: Disturbance rejection control; Dissolved oxygen; Nitrate nitrogen; BSM1; Wastewater treatment processes

  • Regular form based sliding mode control design on a two-wheeled inverted pendulum   Order a copy of this article
    by Yankun Yang, Xinggang Yan, Konstantinos Sirlantzis, Gareth Howells 
    Abstract: In this paper, a Lagrangian-based dynamics is employed for a two-wheeled inverted pendulum with the consideration of unknown matched and unmatched uncertainties that are bounded by known nonlinear functions. The model is linearised and further transformed into a regular form to facilitate the analysis and design. A sliding surface is designed, and a set of conditions is developed such that the resulting sliding motion is uniformly ultimately bounded from a practical perspective. Further, a sliding mode control scheme is proposed such that the system is driven to the sliding surface in f inite time and maintained on it thereafter. Finally, both simulation and experiment are presented using practical model parameters data to demonstrate the effectiveness and robustness of the regulation control.
    Keywords: sliding mode control; regular form; wheeled inverted pendulum; nonlinear system; mobile robots.

  • Revisited Adaptive Sliding Mode Control of Underactuated Mechanical Systems with Real-Time Experiments   Order a copy of this article
    by Afef Hfaiedh, Afef Abdelkrim 
    Abstract: In this paper, the stabilisation problem of a second-order underactuated mechanical system, namely the inertia wheel inverted pendulum, is addressed. Stabilising control design for this system is quite challenging since the control approaches designed for fully actuated systems could not be straightforwardly applied to such a system. We propose a new approach based on a first robust sliding mode controller (SMC) and an adaptation law that does not require the knowledge of uncertainties and perturbations bound and guarantees sufficiently small gain. To resolve the problem of underactuation, the proposed approach is based on a global change of coordinates, transforming the system into a cascade interconnection of linear and nonlinear subsystems. Through this transformation, two new desired trajectories are proposed for the design of the controller. Extensive real-time experiments are conducted to validate the effectiveness of this approach, where the first-order sliding mode controller and the adaptive sliding mode scheme are compared. The experimental results show that the proposed adaptive approach outperforms the original sliding mode controller in terms of external disturbance rejection.
    Keywords: adaptive sliding mode control; underactuated mechanical systems; strict-feedback form; inertia wheel inverted pendulum.

  • Ice Clamping System in Manufacturing Systems as a Cyber-Physical System Towards Industry 4.0
    by Alexandra Mironova, Paolo Mercorelli, Andreas Zedler 
    Abstract: Clamping devices, as a part of a manufacturing system, have the role to fix workpieces during machining operations in order to hold the piece in place to maintain the position locally as well as to ensure a secure grip to withstand the process forces applied to the piece. The quality of the parts produced depends not only on the forces applied by the tool action, but results at the same time from the fixture action itself. In order to prevent the machined part from slipping or being totally released in the presence of the dynamic forces which are acting on the tool-workpiece-clamping system, the clamping forces must be high enough. This paper gives an overview on the most important literature on the topic ice clamping systems for new generation manufacturing in the context of Industry 4.0. Beside this overview prospective and future challenges are given.
    Keywords: Ice clamping; Manufacturing; Data integration; Computer Supported Collaborative Work

  • Research on Influencing Factors of Production Control Valve Used for Water Control in Horizontal Wells
    by Feng Zhang, Hanxiang Wang, Ming Wang 
    Abstract: In this paper, in view of the heterogeneity caused by reservoir physical property and lithologic differences in horizontal wells, which is easy to form locally watered out in horizontal section, the production control valve which can adjust the flow rate is used to control the production of horizontal wells in sections, which is an effective method to delay edge and bottom water inrush. Standard deviation coefficient is used to characterize the balancing degree of production profile. On the premise of eliminating the influence of production pressure differential on the balancing, the opening and quantity of production control valve are optimized. The control variable method is used to analyze the opening size and number of control valves. The results show that the smaller the opening of control valves is, the stronger the balance degree of liquid production profile is, and the balance degree of liquid production profile gradually decreases with the increase of the number of control valves. When installing the control valve, its parameters should be optimized. Through the simulation of the production flow pressure chart, the optimal production is selected, and the corresponding bottom hole flow pressure and optimal production pressure difference are selected.
    Keywords: Horizontal well; balanced production; control valve; liquid production profile;

  • Mixed H2/H Control for Two Quadrotors Transporting a Cable-suspended Payload
    by Minhuan Guo, Dongbing Gu 
    Abstract: In this paper, we design a mixed $H_2/H_{infty}$ controller for two quadrotors transporting a cable-suspended payload. The task for this system is to control the payload to track a pre-defined trajectory in a confined space. There are two challenging issues to be addressed when performing such a task: one is the robustness of the controlled system as the system is under-actuated and very easy to be affected by exogenous disturbances, and the other is the constrained operating environment in which the system is asked to pass a door without causing any collision. Additionally a pre-defined trajectory should be generated to allow the system to pass the door with a smoothed transient behavior. We develop a mixed $H_2/H_{infty}$ controller for this task to strike a balance between smoothing the tracking trajectory and resist the disturbance. The developed controller also possesses the ability to cope with the constraints imposed on inputs and outputs, and it is implemented by using a Linear Matrix Inequality (LMI) approach. The trajectory generation is based on an off-line optimization approach by considering the output flatness of the system. Finally, numerical simulation results are provided to evaluate the system performance and the comparison results against individual $H_2$ or $H_{infty}$ controller are also presented.
    Keywords: Quadrotor transportation, Mixed $H_2$/$H_{infty}$ control, Constrained optimal control, Robust control, linear matrix inequality(LMI)

  • Feedforward gain tuning with genetic algorithm
    by Maher Ben Hariz, Faouzi Bouani 
    Abstract: This paper deals with the design of a fixed low order controller that ensures some closed loop temporal specifications such as settling time and overshoot. Determining the controller parameters involves the resolution of a non-convex optimization problem. Since the problem is not convex and in order to reach the global optimum, a global optimization method has been applied. In order to annul the steady state error especially in presence of system parameters variation, two methods are proposed to compute, online, the feedforward gain. The first method is based on the genetic algorithm and the second one is founded on the classic gradient method. By adopting the proposed procedure, users have only to specify the desired closed loop performances. Simulation results are proposed to shed light the efficiency of the controller.
    Keywords: low order controller; temporal specifications; genetic algorithm; online gain tuning.

  • MPPT Based Backstepping Control For a grid connected-Fuel Cell System Using High Step-up Converter
    by Fadwa EL OTMANI, Abdelmajid Abouloifa, Meriem Aourir, Karim Noussi, Hanane Katir, Fatimazahraa Assad, Ibtissam Lachkar 
    Abstract: This paper aims at studying fuel cell energy production as a promising solution to replace fossil fuels. The management of the fuel cell stack (FCS) while connected to the grid is a real challenge due to FCS’s high nonlinearity and the complexity of the power conditioning stage (PCS). Therefore, a nonlinear controller is designed to handle the energy between the FCS and the electrical grid. In fact, the FCS energy is supplied to the electrical grid through two stages (a high-gain DC-DC and DC-AC converters) and an LCL filter. The proposed controller is elaborated based on the backstepping approach, then a maximum power point tracking (MPPT) block and a fuel flow rate regulator are implemented to extract and exploit the maximum power. The suggested controller has been tested in Matlab software, where the MPPT and the power factor correction are ensured.
    Keywords: Proton exchange membrane Fuel cell; Three-level boost; Interleaved boost; Electrical grid; Backstepping approach; MPPT; maximum power point tracker; P&O; Power factor correction; power conditioning stage;

  • Emery particles identification under contour extraction with maximum entropy approaches
    by Peiyi Zhu, Ying Ding, Ya Gu 
    Abstract: The emery line is kind of a cutting line electroplated with emery particles, which is used to cutting hard material such as silicon wafer, etc. The emery line cutting capacity depends on the number, size and density of emery particles on the line. Traditional detecting by workers is replace by the technology of machine vision, which can improve efficiency of detecting and avoid resources be wasted. However, the emery particles identification is difficult for the adhesive particles on the cutting line using existing methods. The method of contour extraction with maximum entropy approaches was proposed. Image binarization is adopted with maximum entropy threshold method. The initial evolution of the level set curve is present to process the outline of image which can simplify the process of evolution from initial curve to emery particles contour. Adaptive weight coefficient was used for adaptively evolving according to the picture information, which can improve the adaptability of model identification. Experimental results show that the proposed algorithm has higher accuracy in terms of emery particles identification compared with the threshold segmentation algorithm and the traditional level set algorithm.
    Keywords: Emery particles; Contour extraction; Maximum entropy threshold method; Edge detection; Level set.

  • Identification of external force for slender flexible structures via sparse modelling with an under-relaxation scheme
    by Weijie Song, Qian Qiao, Yoshiki Nishi 
    Abstract: This study proposes a method for identifying unknown external forces that act on slender flexible bodies. In this method, the external force is represented as an expansion in the Chebyshev polynomials. The expansion coefficients are determined to minimize the number of nonzero coefficients and the difference between the measured and estimated quantities. An under-relaxation scheme is applied to enhance the robustness of computations for the identification. Static and dynamic beam problems are solved using the method to examine how well it can reconstruct the external forces. Numerical computations and analyses of the results demonstrate that the method generally produces a satisfactory external force reconstruction, and its accuracy is sensitive to the choice of measuring device.
    Keywords: external force identification; Chebyshev polynomials; sparse modelling; under-relaxation; beam

  • Data-Driven Bearing Fault Detection using Hybrid Autoencoder-LSTM Deep Learning Approach
    by Pooja Kamat, Rekha Sugandhi, Satish Kumar 
    Abstract: Artificial Intelligence (AI) and its sub-domains of Machine Learning and Deep Learning have kindled the interests of both industry practitioners and academicians. Its contribution to the manufacturing industry in making intelligent predictions about a machinery’s health and its working has seen a huge surge in the research carried in recent years. Nowadays, AI in manufacturing is popularly applied for the efficient fault detection of machinery using data analytics. Traditional fault predictive classification and further diagnosis have pitfalls such as low prediction accuracy, poor feature extraction and susceptibility to noise. To overcome these disadvantages, this paper proposes the deep-learning based hybrid Autoencoders (AE) - Long-Short Term Memory (LSTM) framework for fault detection. The dimensionality reduction with automatic latent feature extraction by Autoencoders and temporal feature consideration by LSTM help to achieve high fault diagnosis accuracy. The empirical results show that fault detection of roll bearings based on the proposed hybrid AE-LSTM deep learning technique achieved superior results in comparison to the traditional K-means clustering technique.
    Keywords: Bearings, Fault Detection, Deep Learning, Autoencoder, LSTM, K-Means

  • Double integral Sliding Mode control of a boost PEMFC system
    by Ouarda HEDDAD, Lahcene ZIET, Tewfik Bekkouche 
    Abstract: In this article, we will discuss and treat the control strategy which is based on 'Double Integral Sliding Mode' based on the Pulse Width Modulator (PWM-DISM). In this study, the simple integral Sliding Mode (PWM-SISM) control/command was firstly used to show the Steady State error(SSE) of the boost. Secondly, the PWM-DISM control was used for the first time on a proton exchange membrane fuel cell (PEMFC) system to compensate for SSE. The PWM-DISM control was used to track the reference output of the fuel cell system composed of a 7 kw fuel cell supplying a 24 to 96 ? resistive variable load and a 48 V DC bus voltage via a boost converter. The control signal is performed to effectively control the cyclic ratio adjustment of the pulse width modulator (PWM) applied to the boost converter switch formed by an IGBT or MOS transistor. The PWM-DISM control is compared to the conventional PWM-SISM using the SimPowerSystems models implemented by Matlab/ Simulink. The results of the compared simulation between the considered controls confirm a better efficiency and performance for the PWM-DISM controls with regard to: steady state error for a maximum load between 550 mv and 5 mv, steady state error for a minimum load between 170 mv and 2 mv, response time for a maximum load 16,8 ms and response time for a minimum load of 20,6 ms; therefore the improvement and stabilization of the PEMFC system affected by a large variation of these variables: hydrogen supply pressure and load variation in free or connected mode
    Keywords: Pulse Width Modulation (PWM); Polymer Exchange Membrane fuel cell (PEMFC); Power converter; Double integral sliding mode; Steady state error ;Pressure hydrogen supply.

  • Predictive Functional Control based on Particle Swarm Optimization Algorithm for MIMO Process with Time Delay
    by Hamid Ghadiri, Hamed Khodadadi, Ehsan Razavi 
    Abstract: The present study aims to propose a method for designing a predictive functional controller (PFC) based on the particle swarm optimization (PSO) algorithm for the multi-input multi-output (MIMO) process with time delay. Due to the cross-coupling, time delay, and other MIMO industrial process challenges, the classical controller could not overcome the system challenges. PFC is a model-based predictive controller that uses the state-space equations of the system. According to the results, the optimization problem is resolved using the PSO for determining the optimal controller parameters. The incorporated PFC and PSO's performance as the proposed controller is evaluated using simulations on the chamber pressure coke furnace as a MIMO process with time-delay. The simulation results demonstrate that the PFC variables tuned by the PSO approach have better performance compared to the conventional PFC, especially in the presence of disturbances and uncertainty.
    Keywords: MIMO, Time delay, Predictive functional control, Particle swarm optimization, Chamber pressure.

  • Design of fault-tolerant observer for brushless DC motor under rotor eccentricity fault
    by Shihao Liu, Kexin Xing, Wei Dong, Yegui Lin 
    Abstract: The traditional sliding-mode observer (SMO) cannot accurately observe the back-electromotive force (back-EMF) values when the brushless DC motor (BLDCM) has rotor eccentricity fault. In order to solve the problem, the influence of static eccentricity fault on inductance and back-EMF is analyzed, and a fault-tolerant observer is designed in this paper. The fault-tolerant observer uses the Lyapunov stability theroy to identify the phase-to-phase inductance parameters online, and is based on the traditional SMO. According to the phase-to-phase inductance identification values, the SMO coefficient matrix is adjusted in real time. Simulation results shows that the designed fault-tolerant observer can accurately observe the phase-to-phase back-EMF values of BLDCM under the rotor eccentricity fault condition.
    Keywords: brushless DC motor (BLDCM); rotor eccentricity fault; fault-tolerant observer; sliding-mode observer (SMO); parameter identification.

  • Accurate positioning for the center of circular array target based on vanishing points
    by Lijun Sun, Shaokui Ma, Tianfei Chen, Ming Yan , Xiaodong Liu 
    Abstract: Circular array target is widely used in vision measurement systems. The detection of circular targets is usually regarded as ellipse detection after projective transformation. However, the center of the ellipse is not the actual projection of the center of the target circle. For this reason, this paper proposes an algorithm for locating the imaging center of the target circle based on the vanishing points. After completing the extraction and filtering of the ellipse edge, the projective transformation matrix is used to obtain the two vanishing points referring to the coordinate axis direction of the target plane. Then utilizing the principle of perspective invariance and the two vanishing points, two pairs of tangent points on the ellipse edge are determined. Finally, the cross point between the lines connecting the two pair of tangent points is the actual projection point of the target circle. Both simulation experiments and actual experiments demonstrate that the proposed algorithm has the characteristics of simple operation, faster running speed, and higher precision.
    Keywords: circular array target; projective transformation; vanishing points; homography matrix

Special Issue on: SCC-2019 Recent Advances in Systems and Electrical Engineering

  • Multi-weld defects detection based on Gabor filter and Hough transform   Order a copy of this article
    by Chiraz Ajmi 
    Abstract: Weld defect detection is an important application in the field of Non-Destructive Testing (NDT). These defects are mainly due to manufacturing errors or welding processes. In this context, image processing especially segmentation is proposed to detect and localize efficiently different types of defects. It is a challenging task since radiographic images have deficient contrast, poor quality and uneven illumination caused by the inspection techniques. In this article, we propose a robust and automatic method based on the combination of Gabor and Hough transform to detect two major defect types from mono- or multi-weld defect images. It consists of two main stages which are the preprocessing and the segmentation step. The first one is based on the Gaussian filter and contrast stretching. The segmentation step is performed using a sequence of tools starting with Gabor filter and Otsu binarisation method to isolate the weld region from the background and non-weld coming to the Canny detector to extract edges of the spherical defect shape, and finally a modified Hough transform technique for detection, location of linear defects and limiting the welding area. The experimental results show that our proposed method gives good performance for industrial radiographic images.
    Keywords: weld defect; radiography; NDT; Hough transform; Canny detector; Gabor filter.

  • Adaptation of deep learning auditory event recognition and detection in audio surveillance systems   Order a copy of this article
    by Sara Alsubhi, Safiah Endargiri, Ahad Alkabsani, Kaouther Laabidi 
    Abstract: The work of this paper focuses on the idea of adapting computerised machines with the sophisticated abilities to relatively comprehend and act upon an auditory input of natural linguistic nature. We emphasise the addition of acoustic-based audio inputs to the current CCTV systems for the goal of compensating any incomplete data and to reach the maximum usage of the current surveillance systems. In this model, we apply the isolated word technique on a dataset of 8000 audio inputs dedicated to different individuals through the application of two distinct neural networks. The algorithm provides event-based detection capabilities by allowing the detection of unauthorised access through the automatic recognition of each spoken input, together with the identity of the speaker. The proposed algorithm obtained accuracy rates of 84.1% and 80.1% for the recognition by the speakers identity and by the spoken input, respectively. In addition, it showed its superiority over the SVM-based model.
    Keywords: classification; automatic speech recognition; natural language processing; artificial neural network; deep learning; convolutional neural network; audio detection; speaker recognition; speech recognition; Mel spectrogram; CCTV.

  • Design of robust non-integer controllers for fractional order MIMO systems   Order a copy of this article
    by Emna Ouhibi, Maher Ben Hariz, Faouzi Bouani 
    Abstract: The main objective of this paper is to design a robust non-integer order controller for Multi Input Multi Output (MIMO) systems. A linear parametric uncertainties fractional order model is used to describe the system's dynamic behaviour. Assuming that the system can be decoupled and in order to avoid interactions between the systems inputs and outputs, the simple decoupling method has been adopted. In the presence of model parameter uncertainties, the controller parameters are obtained by minimising a min-max non-convex optimisation problem. The optimised cost function is expressed using the closed loop system and the desired characteristic polynomial coefficients. So, the proposed controller ensures some closed loop temporal specifications in spite of the presence of model parameter uncertainties. Simulation examples are carried out to show the performance and the efficiency of the proposed controller.
    Keywords: robust non-integer controller; fractional order MIMO system; simple decoupler; temporal specifications.

  • The harmful influence of employing a large number of pilot resources on the performance of massive MIMO systems   Order a copy of this article
    by Abdelfettah Belhabib, Mohamed Boulouird, Moha M’Rabet Hassani 
    Abstract: One of the severe constraints that limit the implementation of Massive Multi-Input Multi-Output (M-MIMO) systems is called Pilot Contamination (PC). To overcome this problem, a Soft Pilot Reuse (SPR) strategy is proposed, which aims to properly allocate the Pilot Sequences (PS) to the users based on their properties, e.g. Quality-of-Service (QoS). Despite its flaws, which can damage the spectral efficiency, the SPR strategy has been heavily employed as a decontaminating strategy. To reveal the weakness of this approach, this paper adopts a SPR based-strategy that separates the users within cells based on their large scale fading coefficients; therefore, because the edge-users (EUs) are mostly affected by the PC compared to the centre-users (CUs), a set of orthogonal pilots is allocated to the EUs of the overall cells, while the CUs of each cell are obliged to reuse the same set of orthogonal pilots as the CUs of adjacent cells.
    Keywords: massive MIMO; pilot contamination; soft pilot reuse; pilot overhead; conventional strategy; 5G wireless communications.

  • A sensorless mixed DFIM control strategy based on fuzzy-PI speed controller and current sliding mode controller for electric vehicles   Order a copy of this article
    by Mouna Zerzeri, Adel Khedher 
    Abstract: This paper discusses Doubly-Fed Induction Motors (DFIM) integration possibilities in Electric Vehicle (EV) propulsion systems. The motivation behind this work is to develop an appropriate control law for DFIM to be suitable for EV applications. From this point of view, the main contributions of this study are: (i) a mixed control approach of an electric vehicle propulsion system based on a DFIM which is composed of a Fuzzy-PI controller for the mechanical mode and a sliding mode controller for the electrical one; (ii) an active power distribution law of both stator and rotor circuits connected to space vector pulse width modulation voltage source inverter; (iii) a new method to estimate speed by associating an MRAS estimator with an extended Luenberger observer in order to ensure the sensorless command and to compensate the load torque impacts. The effectiveness of the developed sensorless mixed control algorithm is proved by the obtained simulation results for different DFIM operating ranges.
    Keywords: electric vehicle propulsion system; DFIM; fuzzy-PI controller; sliding mode controller; power distribution; MRAS; Luenberger observer.

  • Stability analysis and fault-tolerant control of neutral systems   Order a copy of this article
    by Rabeb Benjemaa, Aicha Hsoumi, Saloua Bel Hadj Ali Naoui 
    Abstract: This work studies the problem of stability analysis and fault-tolerant control of neutral systems. Improved stability criteria are obtained by applying the Lyapunov method and the Linear Matrix Inequality (LMI) technique. An adaptive-observer is designed to detect and estimate faults, and a new control law is proposed to achieve fault compensation. A numerical example is given to illustrate the theoretical results.
    Keywords: neutral time-delay system; stability; fault detection; fault estimation; fault-tolerant control; adaptive observer; linear matrix inequality.

  • Open-switch fault detection scheme in wind energy conversion system based on rotor currents analysis   Order a copy of this article
    by Bilel Touaiti, Hechmi Ben Azza, Mohamed Jemli 
    Abstract: To deal with the performance and service continuity of Doubly Fed Induction Generator (DFIG) based wind energy conversion systems during open-switch Insulated Gate Bipolar Transistor (IGBT) fault, a fault-tolerant Voltage Source Inverter (VSI) is proposed. The fault-tolerant VSI is designed with a redundancy leg to replace the faulty leg after open-switch fault occurrence. In this investigation, we propose a new topology of DC-bus tied DFIG based on an uncontrolled rectifier in the stator side. A Field Oriented Control (FOC) scheme is used to control the DFIG. The open-switch IGBT fault is studied, and a fault detection scheme based on rotor currents analysing within healthy and faulty conditions is proposed. Case study results show that the proposed fault-tolerant VSI can ensure the service continuity of DFIG-DC system. Experimental results are presented in this paper to validate the proposed fault detection scheme.
    Keywords: doubly fed induction generator; fault-tolerant voltage source inverter; redundancy leg; DC bus.

  • Legged robot design and Van der Pol oscillator-based control approach   Order a copy of this article
    by Riadh Zaier, Omer Eldirdiry 
    Abstract: It is widely accepted within the field of animal locomotion that the gait is generated by a central pattern generator (CPG). This type of locomotion pattern generator is usually modelled as a nonlinear oscillator. Many CPGs had been developed in the last few decades and applied as a gait generator of multi-legged robots. Yet, some issues related to the robustness of the locomotion controller still need to be addressed, such as the tuning of the oscillators parameters and its strategy of coupling with the sensory feedback. Therefore, this paper starts by proposing a mechanical design of a bio-inspired legged robot with a passive toe joint. The leg must have a similar gait to that of humans, and hence, the structure is made of light material with dimensions proportional to that of human leg. The paper then elaborates on how to control the leg upon the key characteristics of the CPG generating the rolling motion of the gait. In contrast with the literature, which set the locomotion controller as an oscillator, we consider here the overall control system as a Van der Pol oscillator, and the controller is then deduced accordingly. The legged robot is modelled as an inverted pendulum with a few control parameters that can be tuned to modulate the rolling motion and make it adaptive along with the stride. The locomotion controller is structured so that the overall closed loop system exhibits a stable limit cycle. Finally, the validation of the simulation platform and the implementation results of the designed robot are reported.
    Keywords: biomechanical legs; Van der Pol oscillator; central pattern generator; limit cycle; nonlinear controller.

  • Parameter identification for a photovoltaic module: comparison of PSO, GA and CS metaheuristic optimisation algorithms   Order a copy of this article
    by Ines Ben Ali, Mohamed Wissem Naouar, Eric Monmasson 
    Abstract: Modelling photovoltaic (PV) cells is important for understanding its operation and evaluating its performances under various conditions. For that, it is mandatory to estimate with good accuracy the parameters of a PV cell circuit. In the last decade, metaheuristic optimisation algorithms became widely used for parameter identification of PV modules. In this context, this paper presents a comparative study of three metaheuristic optimisation algorithms: the genetic algorithm GA, the particle swarm optimisation PSO and the cuckoo search CS. These optimisation algorithms were used for PV cell parameter estimation. The used estimation process is based on: (i) a simplified analytical model of a PV cell and (ii) only three I-V curve points that are always available from technical data. The comparative study showed that GA is not appropriate to be used in parameter extraction of the PV model. The CS algorithm exhibited its superior efficiency over other algorithms in terms of estimation accuracy and ease of implementation. However, PSO and particularly the hybrid PSO combined with pattern search algorithm (PSO-PS) appeared to be the most promising in terms of computational efficiency by offering faster speed convergence to the global optimum solution with few tuned parameters.
    Keywords: photovoltaic generator; parameters identification; cuckoo search; particle swarm optimisation; genetic algorithm.

  • Design and characterisation of a new GaN/AlGaN HEMT transistor   Order a copy of this article
    by Naji Guedri, Naoufel Ismail, Rached Gharbi 
    Abstract: AlGaN/GaN HEMT is considered as a backbone of both optical and microwave high power electronic applications. Gallium nitride (GaN) is a wide band-gap semiconductor material with excellent properties for high power, high frequency, and high temperature electronics. In this paper, we designed and discussed the structure of a high electron mobility transistor HEMT based on GaN. To this end, we designed the original two-dimensional architecture composed of COMSOL Multi-physics software. The model evolved in this work is characterised by its very small geometric dimensions 0.52
    Keywords: new structure AlGaN/GaN HEMT; temperature effects and simulation; COMSOL Multi-physics; I-V characteristics.

  • Polynomial chaos for the design of robust controllers with time specifications: a comparison of two approaches   Order a copy of this article
    by Amani Added, Maher Ben Hariz, Faouzi Bouani 
    Abstract: This paper deals with the design of a robust controller for stochastic dynamic systems. A new method is proposed to compute the controller parameters to achieve the desired time requirements. It is based on the polynomial chaos expansion, which is used to provide a high order deterministic state space model. Then, the controller parameters are obtained by minimising a cost function, which depends on the closed loop and the desired characteristic polynomials. The proposed method is compared with a classical method founded on an uncertainty parametric model. The control law problem is formulated as a min-max optimisation. The developed controllers ensure desired closed loop performances, such as settling time and overshoot. Simulation results are presented and compared to highlight the efficiency and the performances of the proposed controllers.
    Keywords: robust controller; low order controller; stochastic uncertainties; polynomial chaos; min-max optimisation; GGP; closed-loop performances.

Special Issue on: Modelling and Simulation Techniques for Industry Applications

  • Hybrid projective synchronisation of fractional-order network system   Order a copy of this article
    by Lingzhong Zhang, Xiangli Li 
    Abstract: The hybrid projective synchronisation (HPS) of memristor-based fractional order delayed neural networks system (MFDNNs) is considered. By using the definitions and properties of differential inclusions and set-valued map, fractional order correlation inequalities are established. The hybrid projective synchronisation of MFDNNs is investigated by designing a feedback controller, and several criteria are derived under the frame of Razumikhin-type stability theorem and Lyapunov function method. A numerical example is given to verify the conclusion.
    Keywords: hybrid projective; networks; delay; synchronisation; memristor.

  • Synchronisation of inertial reaction-diffusion complex networks with mixed time delays via spatiotemporal sampling control   Order a copy of this article
    by TianE Chen, ZaiHe Cheng 
    Abstract: This paper addresses the global synchronisation problem of a class of inertial complex networks with reaction-diffusion terms and mixed time-varying delays. First, the spatiotemporal sampling control scheme using incomplete measurements is proposed to ensure the synchronisation of the delayed inertial reaction-diffusion complex networks, which deduce the update rate of the synchronisation controller. Secondly, by taking new appropriate LyapunovKrasovskii function, using improved Wirtinger Jensen inequalities, new synchronisation criteria are derived that depend on the relationship among the sampling time interval, the feedback control gain and the sampling space interval. Finally, two numerical simulation results substantiate the effectiveness of the theoretical results.
    Keywords: reaction-diffusion; inertial complex networks; incomplete spatial measurements; spatiotemporal sampling control.

  • Parameter and time delays estimation based on compressed sensing for MISO CARMA system modelling   Order a copy of this article
    by Taiyang Tao, Qingxi Xu 
    Abstract: This paper considers estimating parameters and time-delay for multiple input single output (MISO) controlled auto-regressive moving average (CARMA) models with unknown time delays. Inspired by compressed sensing method and hierarchical idea, an orthogonal matching pursuit algorithm based iteration is presented for the MISO CARMA system. The presented algorithm can estimate time-delay and parameters of the MISO CARMA system with limited sampled data. An example is given to show the effectiveness of the algorithm with a few sampled data.
    Keywords: parameter estimation; time-delay; MISO CARMA system; hierarchical idea; orthogonal matching pursuit.

  • Fixed-order H-inf control of an electric power steering system   Order a copy of this article
    by Ai Ping Pang, Hui Zhu, Hong Bo Zhou, Dao Yin Long, Tao Qin, Jing Yang 
    Abstract: The electric power steering (EPS) system has a very small phase margin and it is particularly easy to start oscillation. Therefore, a stable controller is needed to improve the stability margin. In addition, the gain of the torsional moment diagram of the EPS system in different situations causes parameter perturbation, which requires the control design to have a certain robustness of performance and consider all the stability margin, robust performance of the system and the bandwidth requirement of the system. In this paper, the fixed-order H-inf control design is adopted to form an H-inf optimisation matrix with multi-dimensional performance output and a third-order fixed-order H-inf controller is designed for. The controller has good robustness performance, high stability margin, and has a relatively low order compared with the conventional H-inf controller design, which is convenient for practical applications.
    Keywords: fixed-order controller; H-inf control; electric power steering system; robust stability.

  • The algebraic solution parameter estimation methods for control systems based on frequency responses   Order a copy of this article
    by Ling Xu 
    Abstract: System identification is a basic technique which can construct system models for designing system controller. In order to reduce the complexity of the iterative or recursive algorithms and develop easy ways to identify system models, this paper is concerned with the problem of parameter estimation for control systems from observed input and output data of system frequency characteristics. Because the system parameters are contained in the real frequency and imaginary frequency characteristics, we design several algebraic solution methods that use only seldom measurements to determine system parameters in terms of the first-order inertial system and second-order pole systems. In this study, the two-point method, three-point method and four-point method are derived by using the discrete observations of the real frequency characteristic or imaginary frequency characteristic or combining the real frequency and imaginary frequency characteristics. Finally, the effective of the proposed algebraic solution methods for estimating parameters of control systems is verified by a few numerical examples.
    Keywords: parameter estimation; system identification; algebraic solution; transfer function.

  • Design of FPC board assembly control system based on robot integration technology   Order a copy of this article
    by Yan Liu, Xianrong Jiang, Y.A. Di, Chao Liu 
    Abstract: Assembling flexible printed circuit board FPC to printed circuit board PCB is a multi-process and refined work. Using two EPSON C4-A601S robots to work cooperatively to insert both ends of FPC board into electronic circuit board PDF can not only realise the connection of the two circuits, but also achieve the purpose of high-precision assembly. The design takes RC700-A robot controller as the core, and a machine vision system is introduced to accurately judge the positional relationship between the PCB board and FPC board, so as to realise the accurate positioning of FPC board. The force sense control part is introduced to detect and monitor the insertion force of FPC to realise the control of inserting into place. The PLC control part is introduced to complete the loading and unloading of the material platen. Ethernet or remote I/O communication between various parts is established to realise data or signal state sharing. The robot controller cooperates with vision and force sense controllers to control the working path and posture of the two robots and realise FPC board assembly. In the design, EPSON RC+7.0 is used as the software platform to write the robot motion control program. Using Vision Guide as software platform, image processing, visual positioning and other operations are carried out. Force Guide is used as a software platform to set force control parameters and monitor the force in real time. The application of this system in electronic circuit board assembly can not only improve efficiency and reduce production cost, but also realise high precision, intelligence and informatisation in the assembly process.
    Keywords: robot; FPC board assembly; visual positioning; force monitoring; control system.

  • Seismic data reconstruction method based on morphological component analysis   Order a copy of this article
    by Jianhong Yao, Jicheng Liu, Yongxin Chou, Ya Gu 
    Abstract: The real seismic data is usually undersampled in the space domain because of the physical or economic limitations. So the incomplete seismic data needs to be reconstructed before the subsequent processing. A MCA-based method is discussed in this paper, which uses the curvelet dictionary and LDCT dictionary to reconstruct the smooth components and the singular components respectively. The BCR algorithm is adopted to complete the sparse optimisation. The validity of the proposed method was tested by numerical experiments on synthetic and real data. As the method based on curvelet combining with POCS is widely used in practice, we compare its reconstructed results with the MCA-based method. The numerical results validate that the proposed method has higher reconstruction performance.
    Keywords: seismic data reconstruction; MCA; curvelet; LDCT.

  • Multi-cell multi-Bernoulli tracking method based on fractal measurement model   Order a copy of this article
    by Jihong Zhu 
    Abstract: For detecting and tracking directly from image observations without the need for any separate target detection, a novel multi-cell tracking method based on multi-Bernoulli filter using local fractal feature estimation is proposed. The Hurst coefficient estimated by the rescaled range analysis method in this paper is considered as the local fractal feature, which is one of most important parameters in the application of fractal theory. The local fractal feature can offer two advantages for multi-Bernoulli filter. One is that the observation model is easy to establish, the other is that the computation of likelihood function is simple. Experiment results show that our proposed method could achieve an accurate and joint estimate of the number of cells and their individual states, especially in the case of the number of cell population varying and the cellular morphology changing. Furthermore, it shows equivalent tracking accuracy against other tracking methods.
    Keywords: multi-cell tracking; multi-Bernoulli filter; local fractal feature; Hurst coefficient; rescaled range analysis.

  • Study on temperature rise and thermal deformation of rotor caused by eddy current loss of magnetic-liquid double suspension bearing   Order a copy of this article
    by Liwen Chen, Dianrong Gao, Jianhua Zhao, Jisheng Zhao 
    Abstract: Magnetic-Liquid Double Suspension Bearing (MLDSB) is composed of electromagnetic supporting system and hydrostatic supporting system. Owing to greater supporting capacity and static stiffness, it is a great choice under the occasion of middle speeds, overloading and frequent starting. As the MLDSB works, the rotor will rotate at high speed and cut the magnetic induction line to produce eddy current loss (ECL), which will increase the temperature of rotor and lead to thermal deformation. Gaps between magnetic poles and magnetic sleeve are small, so thermal deformation of rotor has a clear impact on oil film thickness, bearing capacity and operation stability. Therefore, the simulation model of MLDSB was established, and the simulation of current loss, temperature rise and thermal deformation of rotor under maximum load condition was carried out. The result showed that eddy current loss will be aggravated by the increase of coil current, number of turns of coils and rotor speed, which will cause temperature rise and thermal deformation of rotor. The research in this paper can provide the theoretical reference for ECL of MLDSB.
    Keywords: magnetic-liquid double suspension bearing; eddy current loss; temperature rise; thermal deformation.

  • Identification of MISO Wiener systems using the LMI algorithm   Order a copy of this article
    by Lincheng Zhou, Xiangli Li 
    Abstract: This paper focuses on a new identification method for multiple-input single-output (MISO) Wiener nonlinear systems, in which the static nonlinear block is assumed to be a polynomial. The basic idea is to establish a MISO Wiener nonlinear identification model with polynomial nonlinearities by means of the key term separation principle. Then, a new identification method based on Levenberg-Marquardt iterative (LMI) search techniques, which can make full use of all the measured input and output data, but also automatically change the search step-size according to the change values of the quadratic criterion function, is derived to obtain an accurate and fast parameter estimation of the model. Finally, the simulation results demonstrate the efficacy of this method.
    Keywords: LMI search; parameter estimation; iterative algorithm; multiple-input single-output system; Wiener nonlinear system.

  • A Novel Double-mGBDT-based Q-Learning   Order a copy of this article
    by Qiming Fu, Shuai Ma, Dawei Tian, JianPing Chen, Zhen Gao, Shan Zhong 
    Abstract: This paper proposes a novel double-mGBDT-based Q-learning algorithm. Compared with traditional deep reinforcement learning, the proposed algorithm uses the mGBDT to replace the DNN, where the mGBDT is introduced as the function approximator. In the learning process, based on the state, we use the Bellman equation to construct the target value, which is used to train the mGBDT in an online manner. Like DQN, we also adopt two mGBDT frameworks, which are used to address the problem of easy divergence. To verify performance, we apply the proposed algorithm DQN and mGBDT to the traditional benchmark problems in CartPole and MountainCar. The results show that the proposed algorithm can converge to the optimal policy, and compared with DQN, the proposed algorithms stability is much better after convergence.
    Keywords: deep learning; reinforcement learning; mGBDT.

  • Back-propagation algorithm to estimate the parameters of auto-regressive exogenous model   Order a copy of this article
    by Tianyang Xu, Jing Chen, Yingjiao Rong 
    Abstract: This paper proposes a back-propagation (BP) algorithm to estimate the parameters of Auto-Regressive eXogenous (ARX) models. By using the SAG method, the proposed algorithm identifies the weights/parameters of the neural network constructed for the ARX model. Furthermore, in order to decrease the oscillation phenomenon in the SAG algorithm, two modified SAG algorithms are developed. A simulation experiment is presented to verify the effectiveness of the proposed methods.
    Keywords: system identification; SAG; sliding data window; weighted; BP neural network.

  • Research on pole placement approach of non-standard S-state-space model with case study   Order a copy of this article
    by Yizhi Wang, Zhong Yang, Shanshan Gu, Weina Chen, Zhenzhong Yu 
    Abstract: Pole placement is a very significant method to improve system performance regarding state feedback control system based on state space approach. However, the criteria to apply pole placement are rather restrictive, especially a MIMO object, requiring a model fully controllable and in standard controllable form. This paper aims to increase the restriction of pole placement regarding those with non-standard form but proved controllable, by introducing a matrix K into state feedback path for matrix transmission. Additionally, the proposed method is applied to an industrial case study based on its state-space model. Simulation results show that, after successful pole placement, system stability and rise time have been improved significantly.
    Keywords: pole placement method; non-standard form model; state feedback approach; matrix transformation.

Special Issue on: Recent Trends of Adaptive Control and its Applications for Unmanned Systems

  • Controlling of lower order dead system by implementing using adaptive RST algorithm
    by YANZHU GUO 
    Abstract: Since the advent of time, mankind has made numerous technological advancement. Every system build is indeed time varying in nature as well as non-linear, they intend to vary with time. Dead or slow system tends to vary at a slow rate, hence controlling them is more challenging as compared to other no-linear systems. In order to control such system, we implemented an RST based control algorithm which can track the output response of the unknown system and control it with minimal error. (?) is a quantity measured in time and it is a time varying parameter for the lower order system, this is the parameter that will change with time and in turn change an entire system response. Since the system is time varying, it is bound to change its coefficients at certain point in time, which changes the system, hence the previously applied control parameters might not be suitable to control the system. Least Square (LS) algorithm is used to track the changes occurring in the system with time and thus changing the control parameter to complement the changes occurred in the system. The proposed algorithm of RST control design of slow time varying system is compiled and simulated in MATLAB environment. The proposed method is compared with the conventional PID controller and it tracks the signal faster with the same amount of work force. It provides better performance and it is more robust and effective than the traditional PID controller.
    Keywords: RST Control Algorithm, Slow Time Varying System, Dead Systems, Least Square Algorithm, Adaptive control, self-tuning Regulator.

  • Research on vibration compensation control of Electromagnetic bearings Rotor
    by Wen Ji, Dongyuan LV, Jianjun Yuan, Qichao LV, Lijun RONG, Lili Zhu 
    Abstract: Aiming at the micro vibration caused by mass imbalance of high-speed magnetically suspended rotor, a novel electromagnetic force vibration compensation control method based on adaptive notch filter has been studied. Considering the influence of mass unbalance disturbance, the closed-loop control system model is established, and the internal relationship between mass imbalance and electromagnetic force disturbance is analyzed. The simulation results show that the method can effectively suppress the influence of electromagnetic force induced by mass imbalance and reduce the micro vibration of the whole system.
    Keywords: magnetically suspended rotor; mass unbalance; notch filter; vibration control; force compensation

  • Comparative analysis of simulator tools for unmanned aerial vehicle communication networks
    by Haque Nawaz 
    Abstract: In the recent years the real world problems are going to be solved by researchers using simulation method for experiments in the field of networks and communication. However, the simulator tools are generally used to assess the theories, ideas and hypothesis by research society. The Unmanned Aerial Vehicle Communication Networks (UAVCN) is an emerging area, having many issues which could be explored. The development of a testbed to explore such issues is an expansive proposition. Hence simulation tools are required to study UAVCN. Therefore, it is more important task for researchers to select an appropriate simulator tool for specific research experiment. This paper presents the simulator tools like: Ns2, Ns3, JSim, MatLab, OMNeT++, OPNET, QualNet, GloMoSim and AVENS. These various simulator tools features and their pros and cons discussed. Comparative analysis of features of aforementioned tools is highlighted in tabular form, and selected simulator tools are compared by implementing a routing protocol. In addition, simulator tools performance is evaluated in terms of memory utilization and computation time with respect to increasing the density of network nodes. Consequently, it has perceived that ns3 is more efficient than ns2, OMNeT++ and GloMoSim. In addition; it has studied that through these tools supports researchers can explore and design the testbed scenarios and evaluate the performance of Unmanned Aerial Vehicle Communication Networks
    Keywords: UAV’s; UAVCN; Ns2; Ns3; JSim; MatLab; OMNeT++; OPNET; QualNet; GloMoSim; AVENS; simulator tools; unmanned aerial vehicles

  • Non-Singular Terminal Sliding Mode Control of Converter-fed DC Motor System with Mismatched Disturbance Compensation
    by Arshad Rauf 
    Abstract: In this paper, the problem of angular velocity trajectory tracking for converter-fed DC motor system with both matched and mismatched disturbances is addressed using a nonsingular terminal sliding mode control. The combination of DC-DC power converters with DC motors for generating so-called smooth start of drives has numerous practical applications. Achieving high performance in such systems is however limited by the influence of unknown multiple disturbances. Furthermore, the conventional mathematical model used to express the dynamics of converter-fed motor systems effectively complicates the ability to compensate the multiple disturbances directly with control signal. In this paper, a control structure with nonsingular terminal sliding mode controller and a finite-time disturbance observer is proposed to address these practical issues. First, a special state transformation is applied, aggregating the acting disturbances/uncertainties in a sole perturbing term of the system expressed in new coordinates. Then, the observer estimates in real-time the information about the lumped disturbances based on already available input/output signals and the obtained estimated signals (and their high order time-derivatives) are used to construct a sliding surface. Finally, the sliding mode controller is applied to achieve high performance of the resultant plant dynamics and to robustify the governing scheme against modeling discrepancies. The efficiency of the proposed control method is validated through multi-criteria numerical simulations.
    Keywords: converter-fed DC motor, finite-time disturbance observer, mismatched disturbances, sliding surface

  • Single Dimension Based Fuzzy Sliding Mode Control Design for the Stabilization of Underactuated Unmanned Under-Water Vehicle
    by Ghulam E Mustafa Abro, Saiful Azrin Bin Mohd Zulkifli, Muhammad Sadiq Ali khan, Vijanth Sagayan Asirvadham 
    Abstract: The paper provides the comparative analysis of traditional fuzzy-based sliding mode controller (F-SMC) and Single Dimension based Fuzzy Sliding mode controller (SDF-SMC) for the stabilization of an underactuated unmanned under-water vehicle (UUV). It has been observed that the sliding mode control design stabilizes the underactuated mechatronic system very smartly i.e. quadrotor craft, but it causes high number of oscillations known as Zeno phenomenon. This effect can easily be eliminated using fuzzy version of sliding mode controller (F-SMC) but on the same moment it takes high processing time due to fuzzification, inference and then defuzzification steps. The major reason for consuming such a huge process time is the two-dimensional rule base table. Thus, this research work will turn that two-dimensional table of rules into single dimension and propose single input based fuzzy sliding mode controller (SDF-SMC) generating crisp input. In addition to this, paper presents the comparative simulation work between conventional Fuzzy-based SMC (F-SMC) and Single Dimension based Fuzzy SMC (SDF-SMC), carried on MATLAB/Simulink software to fasten the process time. In order to validate the effectiveness of proposed control scheme, the SDF-SMC algorithm is also implemented using proper hardware and experimental setup.
    Keywords: Sliding mode control (SMC); Fuzzy based SMC (F-SMC); Single Dimension based Fuzzy SMC (SDF-SMC); Unmanned under-water vehicle (UUV); Processing time

  • Maneuvering Control of an Underactuated Single Rotor Aircraft
    by BONI LIU 
    Abstract: The purpose of this paper is to maneuvering control the model of a single rotor unmanned aircraft (SRUA). SRUA delivers a more flexible and attractive solution with a characteristic of vertical takeoff and landing (VTOL) and hovering ability. This study also designs the control algorithm of this aircraft. The designed control algorithm is applied to the model with six degrees of freedom (DOF). Simulations results show that the designed control scheme has better stability and behavior. A new configuration of rotorcraft as the research object, to realize autonomous flight, according to the existing relevant practical experience, combining the theory of flight mechanics, automatic control, computer technology, and other related disciplines to design the rotorcraft flight control system. Analysis of the flight principle and structure of the rotorcraft is evaluated and carry out the analysis of force and torque, establishing the mathematical model. In combination with the state equations, analyze the coupling analysis and stability of aircraft and describe its control difficulties. A flight control strategy for aircraft is presented and the control loop is designed, including the high control loop, speed control loop, and attitude control loop. After the simulation of several subjects, the proposed control strategy can realize the autonomous flight of the unmanned aircraft.
    Keywords: unmanned aerial vehicle (UAV), control strategy, flight control system, autonomous flight, simulation\r\n\r\n

  • Robust Model Reference Adaptive Control for Five-Link Robotic Exoskeleton
    by Saim Ahmed 
    Abstract: In this paper, H? based model reference adaptive control (MRAC) for controlling the five-link lower limb robotic exoskeleton is developed during the single support phase with uncertainties and unknown external disturbances. Unlike classical MRAC, the presented scheme using H? control and MRAC with adaptive error gain is proposed under uncertain parameter vector and external disturbance. For robustness, H? performance is applied to attenuate the impact of perturbation. Moreover, robust asymptotic stability of the overall system is investigated by Barbalat Lemma selecting a suitable Lyapunov functional candidate. Finally, the efficacy of the developed scheme is validated by relevant example.
    Keywords: Adaptive control, H? performance, Asymptotic stability, Exoskeleton

  • An AI-Driven Automotive Smart Black Box for Accident and Theft Prevention
    by M.Kashif Shaikh, Sellappan Palaniappan, Touraj Khodadadi 
    Abstract: This paper proposes an automotive Smart Black Box (SBB) for accident and theft prevention using artificial intelligence (AI). The SBB is a versatile device and can work with any type of vehicle including electric and conventional cars. It has five smart features including constant facial recognition through AI to identify the driver's face and drowsiness detection. Drowsiness detection will help avoid catastrophic disasters by alarming the drivers if they are about to fall asleep. The SBB also has a 24/7 voice-recording feature that can be used to identify the reasons that caused the accident. Another feature is real-time vehicle tracking using Global System for Mobile Communication (GSM) technology. The SBB would immediately notify the owner if there is any abnormal vehicle movement and help prevent theft. The main contribution of this study is to design an SBB that contains the five aforementioned features and synergizing these features without any of them malfunctioning. The black box will be a Raspberry Pi working on OpenCV for monitoring the car and the details will be sent to the user via a network connection to his android application for a more efficient approach to notify the user. Experimental results prove the efficacy of the designed SBB in recording the relevant information and helping prevent both accidents and thefts of vehicles.
    Keywords: Face recognition, AI, drowsiness detection, GPS tracking, GSM module, Smart Black Box.