Title: Genetic algorithm combined with Taguchi method for optimisation of supply chain configuration considering new product design
Authors: Oulfa Labbi; Latifa Ouzizi; Mohammed Douimi; Abdeslam Ahmadi
Addresses: Ecole Nationale Supérieure d'Arts et Métiers, University of Moulay Ismail, B.P. 15290 El Mansour, 50500 Meknès, Morocco ' Ecole Nationale Supérieure d'Arts et Métiers, University of Moulay Ismail, B.P. 15290 El Mansour, 50500 Meknès, Morocco ' Ecole Nationale Supérieure d'Arts et Métiers, University of Moulay Ismail, B.P. 15290 El Mansour, 50500 Meknès, Morocco ' Ecole Nationale Supérieure d'Arts et Métiers, University of Moulay Ismail, B.P. 15290 El Mansour, 50500 Meknès, Morocco
Abstract: In this paper, we propose a methodology to optimally configure a supply chain when considering a new product design. The supply chain configuration is conducted during the product design phase. In fact, several product design alternatives are possible and the aim is to select the best product design optimising the supply chain and satisfying market place as well. In this design problem, specificities of the new product architecture and logistical constraints of supply chain partners are considered at the same time. This product-supply chain design process simultaneity is modelled using an UML sequence diagram. Supply chain design is achieved by levels corresponding to the product's bill of material. A mathematical model is proposed for optimising costs for each level. Genetic algorithms are used to solve the complexity of the model. Since parameters values of genetic algorithms have a significant impact on their efficiency, we have proposed to combine Taguchi experimental design and genetic algorithm to determine the optimal combination of parameters that optimises the objective function. This method can effectively reduce time spent on parameter design using genetic algorithm and increase also its efficiency. The accuracy of the proposed GA-Taguchi method is validated using CPLEX software to evaluate its performance.
Keywords: supply chain design; new product design; Unified Modeling Language; UML; mixed integer linear programming; MILP; genetic algorithm; Taguchi experimental design.
DOI: 10.1504/IJLSM.2018.096089
International Journal of Logistics Systems and Management, 2018 Vol.31 No.4, pp.531 - 561
Received: 10 Jan 2017
Accepted: 02 Jun 2017
Published online: 12 Nov 2018 *