Title of article :
Optimizing a fuzzy multi-objective closed-loop supply chain model considering financial resources using meta-heuristic
Author/Authors :
Eskandari ، Z. Department of Industrial Engineering - Faculty of Industrial and Mechanical Engineering - Islamic Azad University, Qazvin Branch , Avakh Darestani ، S. Department of Industrial Engineering - Faculty of Industrial and Mechanical Engineering - School of Strategy and Leadership, Faculty of Business and Law - Islamic Azad University, Qazvin Branch Branch, Coventry University , Imannezhad ، R. Department of Industrial Engineering - Islamic Azad University, Bandar-e-Anzali International Islamic Azad Branch , Sharifi ، M. Department of Mechanical and Industrial Engineering. Maintenance Research Laboratory (RRMRLab).Department of Computer ScienceProcessing Laboratory (DSMP lab) Lab), Canada - Department of Computer Science - Distributed Systems and Multimedia - Ryerson University
From page :
1480
To page :
1497
Abstract :
This paper presents a multi-objective mathematical model which aims to optimize and harmonize a supply chain to reduce costs, improve quality, and achieve a competitive advantage and position using meta-heuristic algorithms. The purpose of optimization in this field is to increase quality and customer satisfaction and reduce production time and related prices. The present research simultaneously optimized the supply chain in the multi-product and multi-period modes. The presented mathematical model was firstly validated. The algorithm’s parameters are then adjusted to solve the model with the multi-objective simulated annealing (MOSA) algorithm. To validate the designed algorithm’s performance, we solve some examples with General Algebraic Modeling System (GAMS). The MOSA algorithm has achieved an average error of %0.3, %1.7, and %0.7 for the first, second, and third objective functions, respectively, in average less than 1 minute. The average time to solve was 1847 seconds for the GAMS software; however, the GAMS couldn’t reach an optimal solution for the large problem in a reasonable computational time. The designed algorithm’s average error was less than 2% for each of the three objectives under study. These show the effectiveness of the MOSA algorithm in solving the problem introduced in this paper.
Keywords :
Supply chain , Metaheuristics , Logistics , Fuzzy sets , Multi , objective
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)
Record number :
2746926
Link To Document :
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