Title of article :
Design a Green Closed Loop Supply Chain Network by Considering Discount under Uncertainty
Author/Authors :
Ghahremani-Nahr, Javid Faculty member of ACECR - Development and Planning Institute, Tabriz , Nozari, Hamed Department of Industrial Engineering - Central Tehran Branch - Islamic Azad University, Tehran , Najafi, Esmaeil Department of Industrial Engineering - Science and Research Branch - Islamic Azad University, Tehran
Pages :
29
From page :
238
To page :
266
Abstract :
Mathematical model of a multi-product multi-period multi-echelon closed-loop supply chain network design under uncertainty is designed in this paper. The designed network consists of raw material suppliers, plants, warehouses, distribution centers and customer zones in forward chain and collection centers, repair centers, recovery/decomposition center and disposal center in reverse chain. The goal of the model is to determine the quantities of products and raw material transported between the supply chain entities in each period by considering different transportation mode, the number and locations of the potential facilities, the shortage of products in each period, and the inventory of products in warehouses and plants with considering discount and uncertainty parameters. The robust possibilistic optimization approach was used to control the uncertainty parameter. At the end to solve the proposed model, five meta-heuristic algorithms include genetic algorithm, bee colony algorithm, simulated annealing, imperial competitive algorithm and particle swarm optimization are utilized. Finally, some numerical illustrations are provided to compare the proposed algorithms. The results show the genetic algorithm is efficient algorithm for solve the designed model in this paper.
Keywords :
Green Closed Loop Supply Chain , Discount , Meta-Heuristic Algorithms , Robust Possibilistic Optimization Approach , Uncertainty
Journal title :
Journal of Applied Research on Industrial Engineering
Serial Year :
2020
Record number :
2523572
Link To Document :
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