Forthcoming Articles

International Journal of Computer Applications in Technology

International Journal of Computer Applications in Technology (IJCAT)

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International Journal of Computer Applications in Technology (20 papers in press)

Regular Issues

  •   Free full-text access Open AccessSupply chain demand forecasting and low-altitude economic risks based on machine learning and artificial intelligence
    ( Free Full-text Access ) CC-BY-NC-ND
    by Jilu Liu, Yubin Ying, Shaohui Shu, Zechen Zhang 
    Abstract: To address the challenges of coupling high-frequency supply chain forecasting with low-altitude economic risk, a unified framework integrating machine learning and artificial intelligence is proposed. A Long Short-Term Memory (LSTM)-Transformer hybrid model is designed to capture multi-granularity temporal dependencies and mitigate the bullwhip effect. A Graph Attention Network (GAT)-driven risk coupling network is constructed, integrating AirSim simulations with real warehouse data for dynamic quantification. Results show that the forecast RMSE is reduced by 35.3% compared to the Autoregressive Integrated Moving Average (ARIMA) model, and the multi-granularity MAPE variance is only 0.123. Through a joint decision-making mechanism, this method provides an intelligent decision-making paradigm for multi-source heterogeneous scenarios.
    Keywords: supply chain demand forecasting; low-altitude economy; risk analysis; machine learning; artificial intelligence.
    DOI: 10.1504/IJCAT.2026.10077901
     
  •   Free full-text access Open AccessEcological management algorithm of fresh supply chain information under artificial intelligence and blockchain architecture
    ( Free Full-text Access ) CC-BY-NC-ND
    by Chanjuan Li 
    Abstract: This paper establishes a new supply chain management system based on artificial intelligence and blockchain technology (BT), and proposes a new supply chain solution on this basis. This paper defines the traditional centralised management mode as Supply Chain 1 and the blockchain distributed architecture as Supply Chain 2. Sample 1 consists of 500 sets of structured transaction data, while Sample 2 consists of 500 sets of unstructured sensor log data. The results showed that in sample 1, the information transmission times of supply chain 1 and supply chain 2 were 15.4 s and 3.3 s. In sample 2, when the sample size was 500, the information transmission times of SC 1 and SC 2 were 20.7 s and 4.2 s. It can be seen that SC 2 has a higher information transmission efficiency. This evaluation algorithm can be used in practice to diagnose supply chain information transmission bottlenecks and optimise resource allocation.
    Keywords: artificial intelligence; blockchain architecture; fresh supply chain; information ecological management.
    DOI: 10.1504/IJCAT.2026.10077983
     
  •   Free full-text access Open AccessSimulation model of marine biological population based on multi-agent comfort drive
    ( Free Full-text Access ) CC-BY-NC-ND
    by Xi Deng, Wei Liang, Yupeng Zhu 
    Abstract: Current simulation models that focus on marine biological communities have not yet taken into account the effects of comfort on the behaviour of single organisms. This shortcoming makes it difficult for researchers to develop accurate simulations of how groups behave when faced with adaptive behaviour in complicated environments. A Multi-Agent System based on Reinforcement Learning (RL) is proposed in this paper, which uses Environmental Perception Mechanisms and Comfort Functions to optimise decisions made by individual agents in complex marine environments via Q-Learning and Deep Q-Networks (DQN). The proposed approach employs a collaborative strategy that combines local and global comfort to simulate collective actions. Experimental results indicate that a comfort-driven decision-making model would enable a collective of individuals to converge within 240 seconds, with 85% of the individuals congregating in areas they perceived as having the highest comfort levels. This work opens up new avenues for simulating the behaviours of marine biological communities and demonstrates the potential of a comfort-driven approach to studying the adaptive behaviour of groups.
    Keywords: marine species group simulation; comfort-driven mechanism; multi-agent system; reinforcement learning; deep Q-network.
    DOI: 10.1504/IJCAT.2026.10078256
     
  •   Free full-text access Open AccessCISAA: a collective intelligence-based optimisation framework for low-altitude airspace resource allocation and engineering management
    ( Free Full-text Access ) CC-BY-NC-ND
    by Feng Li 
    Abstract: The rapid growth of the low-altitude economy and complex airspace operations pose challenges for efficient and adaptive resource allocation. Traditional methods struggle with multi-dimensional coupling among resources, missions, and management under uncertainty. This paper proposes a Collective Intelligence-based Spatio-Allocation and Administration (CISAA) framework that integrates swarm intelligence with hierarchical dynamic optimization to enable collaborative decision-making among UAVs, infrastructure units, and management systems. Through multi-layer coordination, CISAA optimizes task scheduling, airspace utilization, and engineering progress. Experiments in simulated low-altitude scenarios show that CISAA achieves higher resource efficiency, task completion, and system stability compared with heuristic and centralized approaches, offering a novel path toward intelligent and sustainable low-altitude airspace management.
    Keywords: low-altitude airspace management; collective intelligence optimisation; multi-agent coordination; engineering resource allocation; adaptive scheduling.
    DOI: 10.1504/IJCAT.2026.10078501
     
  •   Free full-text access Open AccessApplication of information optics experimental methods in optical sensors for wearable devices
    ( Free Full-text Access ) CC-BY-NC-ND
    by Yifang Li, Yingji He 
    Abstract: Traditional optical sensors struggle with high-precision physiological monitoring in dynamic environments and lack sufficient processing power for real-time wearable devices. This paper presents an information optics method using a microlens array-based optical sensor with advanced optical modulation to enhance resolution and dynamic response. A combined FM and AM signal transmission improves anti-interference and data speed. A filtering-based data processing method and real-time feedback mechanism ensure signal accuracy and timeliness. Experimental results show that under low, medium, and high noise, the transmission rate increases by 350 bps, 404 bps, and 281 bps, respectively, while bit error rates drop to 0.01, 0.03, and 0.07. In dynamic measurements of heart rate, body temperature, blood oxygen saturation, and blood pressure, accuracy exceeds 92%, and average response time is 0.20 seconds. This demonstrates the effectiveness of the information optics method in wearable optical sensors.
    Keywords: information optics experiment; wearable devices; optical sensor; microlens array; filtering algorithm.
    DOI: 10.1504/IJCAT.2026.10079101
     
  •   Free full-text access Open AccessFrom physical isolation to disaster recovery communication guarantee based on software-defined perimeter
    ( Free Full-text Access ) CC-BY-NC-ND
    by Chengfei Qi, Yachao Wang, Shan Li, Yuning Zhang, Wenwen Li, Xinyue Zhang 
    Abstract: This paper proposes a layered fusion architecture to address the contradiction between the security of physical isolation and the flexibility of Software Defined Perimeter (SDP) in disaster recovery. The core layer uses Quantum Noise Channel Encryption (QNCE) and one-way optical gate hardware to ensure absolute data security and solve recovery point hysteresis. The control layer enhances dynamic defense with SDP, blocking 98.2% of lateral attacks and using a 50ms fuse mechanism. Resource scheduling via weighted fair queue improves utilization to 78.4%, reducing TCO by 32.7%. The architecture blocks 100% of APT attacks, with 48.2ms fault switching delay. It achieves 100% Tier-0 RTO and 99.2% average RTO. Under 150% overload, it has a 99.0% switching success rate and supports up to 160% load.
    Keywords: disaster recovery communication; communication security; security protection; software defined perimeter; physical isolation.
    DOI: 10.1504/IJCAT.2026.10079161
     
  •   Free full-text access Open AccessSports biomechanical performance analysis algorithm and geometric parameter equation based on reinforcement learning.
    ( Free Full-text Access ) CC-BY-NC-ND
    by Lian Xiao, Zhe Huang, Zhenzhen Wang 
    Abstract: The existing biomechanical performance analysis models face the problem of balancing high-precision modelling and real-time performance. Based on this, the paper proposes a biomechanical performance analysis framework based on geometric parameter equations and deep reinforcement learning (DRL) collaborative optimisation. First, this paper constructs a rigid body dynamic environment model through explicit geometric parameter equations, and then designs a reward function that comprehensively considers multi-objective requirements such as motion accuracy, energy consumption, and stability, and second, introduces geometric parameter adaptive mechanisms and combinatorial transfer learning techniques to improve the models ability to adapt to individual geometric features, ensuring its universality and personalised performance among different individuals. The experimental results show that compared with the baseline model, this algorithm reduces the motion accuracy error by about 50% in running and jumping tasks, shortens the single frame data processing time by 37%.
    Keywords: biomechanical performance; geometric parameter equation; deep reinforcement learning; deep neural network; reward function.
    DOI: 10.1504/IJCAT.2026.10079193
     
  • FPGA implementation and Multisim simulation of a new four-dimensional two-scroll hyperchaotic system with coexisting attractors   Order a copy of this article
    by Sundarapandian Vaidyanathan, Esteban Tlelo-Cuautle, Khaled Benkouider, Aceng Sambas, Ciro Fabian Bermudez-Marquez, Samy Abdelwahab Safaan 
    Abstract: Field-programmable gate array (FPGA) design of a new four-dimensional two-scroll hyperchaotic system is investigated in this work. A detailed system modelling of the new system with a hyperchaotic attractor begins this work with phase plots, which is followed by a bifurcation study of the new system. Special dynamic properties such as multistability and symmetry are also investigated for the new system. Using Multisim software, a circuit model is designed and simulated for the new hyperchaotic system. FPGA design and Multisim simulation of the new system enable practical applications in science and engineering. The implementation of the FPGA design in this work is carried out by applying two numerical schemes, viz. Forward Euler and Trapezoidal methods. Experimental attractors observed in the oscilloscope show good match with the Matlab signal plots.The FPGA hardware resources are detailed for both numerical methods.
    Keywords: hyperchaos; bifurcation; symmetry; phase plots; hyperchaotic system;rnparameters; stability; multistability; circuit model; FPGA implementation.

  • Improving hybrid-layer convolutional neural network system for lung cancer nodule classification using enhanced weight optimisation algorithm   Order a copy of this article
    by Vikul Pawar, P. Premchand 
    Abstract: In recent times, lung cancer is evolving as a highly life-threatening disease for human beings. According to the WHO, lung cancer disease is the second largest cause of deaths as compared to all other types of cancer. The prevailing available technology is striving to get more exposure in the field of medical science using Computer Assisted Diagnosis (CAD), where image processing is playing a crucial role for detecting the cancerous nodules in computer tomographic images. Augmenting the machine learning techniques with image processing algorithms is becoming a more comprehensive examination of cancer disease in proposed CAD systems. This paper is describes a heuristic approach for lung cancer nodule detection, and the proposed model predominantly consists of the following tasks, which are image enhancement, segmenting ROI (Region of Interest), features extraction, and nodule classification. In pre-processing, primarily the Adaptive Median Filter (AMF) filtering method is applied to eliminate the speckle noise from input CT images of Lung Image Database Consortium (LIDC) and Image Database Resource Initiative (IDRI): in the LIDC-IDRI dataset, the quality of input image is improved by applying Histogram Equalization (HE) technique with Contrast-Limited Adaptive (CLA) approach. Secondly, in the successive stage the Improved Level-Set (ILS) algorithm is used to segment the ROI. Furthermore, the third step of the projected work is applied to extract the definite learnable texture features and statistical features from the segmented ROI. The extracted features in the subsequent stage of classification are applied to Hybrid-Layer Convolutional Neural Network (HL-CNN) architecture to classify the lung cancer nodule as either benign or malignant. Principally this research is carried out by contributing to each stage of it, where the novel concept of the improved Hybrid-Layer Convolutional Neural Network (HL-CNN) is employed by optimising and selecting the optimal weight using the Enhanced Cat Swarm Optimisation (ECSO) algorithm. The experimental result of the proposed HL-CNN using the weight optimisation algorithm ECSO is achieved an accuracy of 93%, which is comparatively efficient with respect to existing models such as DBN, SVM, CNN, WOA, MFO, and CSO. Moreover, the proposed model conclusively gives a decision on the detected nodule as either benign or malignant.
    Keywords: Computer Assisted Diagnosis (CAD); Computer Vision; Cancer Diagnosis; Image Classification; Image Enhancement; Image Segmentation; Feature Extraction.

  • Prediction model for total amount of coke oven gas generation based on FCM-RBF   Order a copy of this article
    by Lili Feng, Jun Peng, Zhaojun Huang 
    Abstract: The rational use of Coke Oven Gas (COG) is of great significance to improve the economic efficiency of enterprises. In this paper, a COG generation prediction model based on fuzzy C-mean clustering (FCM) and radial basis function (RBF) neural network is proposed to address the problems such as the difficulty of accurate modelling of COG generation process and the difficulty of real-time flow prediction. Firstly, the coke oven production process is analysed and correlation analysis is used to select the influencing factors. Secondly, the FCM is used to classify the working conditions of the coke oven, and the appropriate number of working conditions is selected through experiments. Finally, the prediction models under different working conditions are established separately by using RBF. The experiments were carried out using actual industrial production data, and the experimental results showed that the model could provide guidance reference for the dispatchers.
    Keywords: coking oven process; fuzzy C-means clustering; prediction model; radial basis function neural network.

  • Unmanned aerial vehicle non-stop inspection and obstacle avoidance route planning based on reinforcement learning cuckoo search algorithm   Order a copy of this article
    by Xiaoyong Han, Weiling Lv 
    Abstract: In order to improve the success rate and coverage of obstacle avoidance routes for unmanned aerial vehicle (UAV) during non-stop inspections, a UAV non-stop inspection obstacle avoidance route planning method based on reinforcement learning cuckoo search algorithm is proposed. Firstly, establish a mathematical model that comprehensively considers environmental information, inspection task requirements, and drone performance constraints. Secondly, build a drone non-stop obstacle avoidance inspection route planning model that integrates capability limitations and operational requirements. Finally, the cuckoo search algorithm is used to solve the obstacle avoidance route planning for drone inspection, and reinforcement learning is used to optimize the search mode. Improved algorithm combined with Q-learning, enhancing global search efficiency through three strategic actions to improve solving efficiency and stability. Test results show that the proposed method consistently maintains a success rate of over 97% in obstacle avoidance during drone inspections, and the route coverage rate remains consistently above 95%.
    Keywords: reinforcement learning; cuckoo search algorithm; unmanned aerial vehicle; non-stop inspection; obstacle avoidance route planning.
    DOI: 10.1504/IJCAT.2025.10077513
     
  • Personalised recommendation methods for information resources on English online learning platforms   Order a copy of this article
    by Jing Liang 
    Abstract: In this paper, a new personalised recommendation methods for information resources on English online learning platforms is proposed. Design ER storage scale and keyword storage scale, and complete the construction of the English online education platform database. Based on data from English online education platforms, overlapping community partitioning is achieved through Bayesian non negative matrix decomposition, and user interest labels are automatically annotated to achieve user group modeling. Combining user interest preference features and cognitive level features, personalised English resource recommendations are completed. Through experiments, the results show that the proposed method has a recommendation accuracy of up to 95.4%, a recall rate of up to 94.1%, and a recommendation time consistently below 0.91s, demonstrating good application effectiveness.
    Keywords: English; online learning platform; information resources; personalised recommendation.
    DOI: 10.1504/IJCAT.2025.10077514
     
  • Slope stability assessment based on a combined weight-cloud model   Order a copy of this article
    by Decheng Zhang, Jielu He, Yunjun Yang 
    Abstract: To evaluate the stability of slopes accurately and reduce the risk of landslide accidents during slope treatment, this study focuses on four aspects: slope morphology, rock mass characteristics, geological structure, and triggering factors. Based on these factors and the intrinsic relationships among indicators, the study refines them into 12 secondary indicators to establish a risk assessment system for slope instability. This research aims to address limitations in previous studies, where the combined influence of subjective judgment and objective data was not fully integrated, and uncertainties in slope evaluation indicators were not effectively managed. To improve the accuracy of weighting, a combination of subjective weighting and objective weighting methods is adopted. The cloud model is used to solve the uncertainty and imprecision of the impact evaluation index, and the slope stability grade is determined according to the principle of maximum certainty. Finally, the method is applied to an engineering example, and the slope stability grade obtained is consistent with the actual slope stability grade, demonstrating that this method can accurately evaluate slope stability.
    Keywords: slope instability; stability evaluation; combined weighting; cloud model.
    DOI: 10.1504/IJCAT.2025.10078410
     
  • Personalized recommendation of multi-objective tourism routes based on improved shuffled frog leaping algorithm   Order a copy of this article
    by Weina Pei, Fengjuan Tian 
    Abstract: To address the limitations of low accuracy, long computation time, and low user satisfaction associated with traditional multi-objective tourism route personalised recommendation methods, this study proposes a novel personalised recommendation method based on an improved shuffled frog leaping algorithm. Tourist attraction data were compiled using the Scrapy framework. The compiled data were then clustered via spectral clustering and combined with relevant data to achieve regional division of attractions using an ARMA model. A personalised recommendation model for multi-objective tourism routes was constructed based on the divided attraction regions, incorporating multiple constraint conditions. An improved shuffled frog leaping algorithm was employed to solve the recommendation model, yielding the optimal personalised recommendation scheme. Experimental results demonstrate that the proposed method achieves a maximum recommendation accuracy of 97.4%, a minimum recommendation time of 0.98 s, and a high user satisfaction score of 9.67.
    Keywords: improved shuffled frog leaping algorithm; multi-objective; tourism routes; personalised recommendation; spectral clustering algorithm; regional division of tourist attractions.
    DOI: 10.1504/IJCAT.2025.10078500
     
  • Signal distortion schemes for peak-to-average power ratio reduction over multi-carrier based orthogonal frequency division multiplexing system: a survey   Order a copy of this article
    by Parag Jain, Shruti Dixit 
    Abstract: TThe rapid development of multimedia applications necessitates the ability to transmit large volume of data with certain mobile capabilities of multi-carrier based orthogonal frequency division multiplexing (OFDM) communication systems. Increased data rates and high mobility in the OFDM system raise the number of subcarriers, which in turn, causes a major problem of high peak-to-average power ratio (PAPR). The aim of this survey is to give the readers and practitioners in the fields wider understanding of schemes for signal distortion for minimising PAPR problem in OFDM systems and make a taxonomy of such systems. A taxonomy of signal distortion scheme is classified into four techniques namely companding, peak windowing, clipping & filtering and peak cancellation. The metric of this survey for evaluating the same techniques is based on complexity analysis and performance associated factors such as transmitted power, error rates, bandwidth expansion etc. Moreover, this survey also focuses on the advantages, disadvantages and use case suitability for the above-mentioned techniques which helps readers to make a proper judgment about the selection of techniques corresponding to the given scenario.
    Keywords: clipping & filtering; peak windowing; orthogonal frequency division multiplexing; companding; peak cancellation; peak-to-average power ratio.
    DOI: 10.1504/IJCAT.2025.10078755
     
  • Monitoring emerging trends by content correlation in social media channels using time-stamping technique of blockchain technology   Order a copy of this article
    by Fazal Tariq, Muhammad Tufail, Taj Rehman 
    Abstract: The rapid evolution of social media demands novel techniques for real-time trend detection on decentralised platforms. Traditional methods such as ARIMA, machine learning, NLP and network analysis face limitations due to data silos, lack of transparency and scalability constraints. This work proposes a TST-based blockchain scheme for content correlation and trend tracking, utilising Ethereum smart contracts to generate tamper-evident timestamps for cross-platform synchronisation. Combined with BERT-based semantic embeddings and temporal metadata, our solution enables transparent, auditable, low-latency trend detection. Experiments on 10,000 posts from Twitter, Reddit and Facebook show that TST achieves 81.2% accuracy and an F1-score of 0.83, outperforming ARIMA by 33.9%, traditional ML by 20.828.7%, NLP by 35.2% and network methods by 34.2%. With a latency of just 2.0 seconds, TST is 912
    Keywords: SMA; social media analysis; trend analysis; content correlation; BCT; blockchain technology; decentralised data; machine learning; TST; time-stamping technique.
    DOI: 10.1504/IJCAT.2025.10079036
     
  • Effective product recommendation system through topic modelling and K-means approach   Order a copy of this article
    by Manu G. Thomas, S. Senthil 
    Abstract: Product recommendation systems are widely used to deliver personalised suggestions based on user preferences. However, traditional approaches often suffer from high computational complexity, overfitting, and limited accuracy when handling large-scale textual data. This study proposes an effective product recommendation system using topic modelling and clustering techniques. Latent Dirichlet Allocation (LDA) combined with term frequency inverse document frequency (TF-IDF), count vectorisation, and doc2vec is employed to extract meaningful topics from Twitter data. A modified k-means clustering approach, incorporating arithmetic mean-based centroid initialisation and cosine similarity, improves clustering accuracy and convergence. The model utilises Twitter event data and Flipkart product review datasets to generate relevant recommendations. Experimental results demonstrate that the proposed TF-IDF-based approach outperforms existing methods in terms of similarity score and accuracy, providing improved recommendation quality and effective handling of high-dimensional textual data.
    Keywords: product recommendation; recommendation systems; topic modelling; latent Dirichlet allocation; LDA; term frequency inverse document frequency; TF-IDF; count vectorisation; doc2vec; k-means clustering; cosine similarity; Twitter data; Flipkart dataset; machine learning.
    DOI: 10.1504/IJCAT.2025.10079102
     
  • Anomaly detection for English MOOC teaching platform data based on improved random forest   Order a copy of this article
    by Hongmei Niu 
    Abstract: In order to solve the problem of low AUC value and Kappa coefficient in traditional detection methods, an anomaly detection method for English MOOC teaching platform data based on improved random forest is proposed. Firstly, the raw data is cleaned and processed using approximate symbol aggregation algorithm to eliminate outliers such as bias, missing, and redundancy; Then, the cleaned data features are extracted through the autoencoder component in the stack model architecture; Finally, the confusion factor and decision tree maximum depth constraint factor are introduced to improve the random forest algorithm, and the improved algorithm is used to detect data anomalies. The experimental results show that the maximum AUC value of this method can reach 0.981, and the upper and lower limits of Kappa coefficient are 0.94 and 0.85, respectively, indicating that this method can effectively distinguish between normal data and abnormal data.
    Keywords: English MOOC teaching platform; data; anomaly detection; random forest; autoencode; data features; feature confusion factor; maximum depth constraint factor.
    DOI: 10.1504/IJCAT.2025.10079103
     
  • HLR algorithm: a novel approach for mathematical expressions recognition from ruled handwritten data samples   Order a copy of this article
    by Sakshi Arora, Chetan Sharma 
    Abstract: The recognition of handwritten mathematical expressions has been a challenging problem, particularly emphasized during the shift to online education due to COVID-19. Researchers conducted an experiment using a dataset of handwritten expressions collected from 991 students on regular ruled sheets, aiming to develop recognizers and evaluators for assessing students' exam papers in scientific and mathematical subjects. The study introduces a novel horizontal line removal (HLR) algorithm for effective document preprocessing. Following this, a neural network-based recognizer was trained on the dataset, with various neural network architectures tested to achieve optimal performance. The best model reached a recognition accuracy of 87.89%. This research is significant as it is the first to focus on mathematical expressions written on ruled sheets, offering a fresh perspective that could enhance the future of educational assessment and technology integration in learning environments.
    Keywords: mathematical expressions; pre-processing; segmentation; neural network; handwritten mathematical expressions; recognition.
    DOI: 10.1504/IJCAT.2025.10079104
     
  • Improving autonomous networks using predictive offloading in mobile-edge computing   Order a copy of this article
    by Himanshi Babbar, Shalli RANI 
    Abstract: The integration of Mobile Edge Computing (MEC) with Vehicular Edge Computing (VEC) to enhance the efficiency of autonomous networks is presented in this research. Traditional offloading strategies rely on reactive approaches, which fail to anticipate workload variations, leading to high latency, suboptimal resource allocation, and increased energy consumption. To address these challenges, we propose an intelligent predictive offloading method that dynamically distributes computing workloads among edge servers and vehicles. The method leverages Vehicle-to-Infrastructure (V2I) and Vehicle-to-Vehicle (V2V) communications to optimise task transfer and mobility prediction. Our approach reduces computational latency by up to 40% and decreases communication costs by 25%, as demonstrated through simulations in a high-speed vehicular environment. Additionally, we show that predictive offloading improves resource utilisation efficiency by 90%, compared to 65% in reactive offloading methods. The proposed framework significantly enhances real-time performance for applications such as traffic management and autonomous driving by minimising delays and ensuring seamless task execution. These results establish predictive offloading as a viable solution for next-generation intelligent transportation systems.
    Keywords: autonomous networks; vehicles communication; mobile edge computing; performance evaluation.
    DOI: 10.1504/IJCAT.2026.10079442