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Information Journal Paper

Title

A MULTI-OBJECTIVE EVOLUTIONARY APPROACH FOR INTEGRATED PRODUCTION- DISTRIBUTION PLANNING PROBLEM IN A SUPPLY CHAIN NETWORK

Pages

  89-102

Keywords

SUPPLY CHAIN NETWORK (SCN) 
INTEGRATED PRODUCTION-DISTRIBUTION PLANNING (PDP) 
MULTI-OBJECTIVE SIMULATED ANNEALING (MOSA) 
NON-DOMINATED SORTING GENETIC ALGORITHM (NSGA-II) 

Abstract

 Integrated production-distribution planning (PDP) is one of the most important approaches in supply chain networks. We consider a supply chain network (SCN) consististing of multi suppliers, plants, distribution centers (DCs), and retailers. A bi-objective mixed integer linear programming model for integrating production-distribution designed here aim to simultaneously minimize total net costs in supply chain and transfer time of products for retailers. From different terms of evolutionary computations, this paper proposes a Pareto-based metaheuristic algorithm called multi-objective simulated annealing (MOSA) to solve the problem. To validate the results obtained, a popular algorithm, namely non-dominated sorting genetic algorithm (NSGA-II) is utilized as well. Since the solution-quality of proposed metaheuristic algorithm severely depends on their parameters, the TAGUCHI METHOD is utilized to calibrate the parameters of the proposed algorithm. Finally, in order to probe the validity of the proposed model, a numerical example is solved and conclusions are discussed.

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    Cite

    APA: Copy

    SARRAFHA, KEYVAN, KAZEMI, ABOLFAZL, & ALINEZHAD, ALIREZA. (2014). A MULTI-OBJECTIVE EVOLUTIONARY APPROACH FOR INTEGRATED PRODUCTION- DISTRIBUTION PLANNING PROBLEM IN A SUPPLY CHAIN NETWORK. JOURNAL OF OPTIMIZATION IN INDUSTRIAL ENGINEERING (JOURNAL OF INDUSTRIAL ENGINEERING), 8(1 (14)), 89-102. SID. https://sid.ir/paper/631407/en

    Vancouver: Copy

    SARRAFHA KEYVAN, KAZEMI ABOLFAZL, ALINEZHAD ALIREZA. A MULTI-OBJECTIVE EVOLUTIONARY APPROACH FOR INTEGRATED PRODUCTION- DISTRIBUTION PLANNING PROBLEM IN A SUPPLY CHAIN NETWORK. JOURNAL OF OPTIMIZATION IN INDUSTRIAL ENGINEERING (JOURNAL OF INDUSTRIAL ENGINEERING)[Internet]. 2014;8(1 (14)):89-102. Available from: https://sid.ir/paper/631407/en

    IEEE: Copy

    KEYVAN SARRAFHA, ABOLFAZL KAZEMI, and ALIREZA ALINEZHAD, “A MULTI-OBJECTIVE EVOLUTIONARY APPROACH FOR INTEGRATED PRODUCTION- DISTRIBUTION PLANNING PROBLEM IN A SUPPLY CHAIN NETWORK,” JOURNAL OF OPTIMIZATION IN INDUSTRIAL ENGINEERING (JOURNAL OF INDUSTRIAL ENGINEERING), vol. 8, no. 1 (14), pp. 89–102, 2014, [Online]. Available: https://sid.ir/paper/631407/en

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