Reliable design of a closed loop supply chain network under uncertainty: An interval fuzzy possibilistic chance-constrained model |
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Authors: | Behnam Vahdani Reza Tavakkoli-Moghaddam Fariborz Jolai Arman Baboli |
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Affiliation: | 1. Department of Industrial Engineering , College of Engineering, University of Tehran , Tehran , Iran b.vahdani@gmail.com;3. Department of Industrial Engineering , College of Engineering, University of Tehran , Tehran , Iran;4. INSA-Lyon , DISP Laboratory , 69621 , Villeurbanne Cedex , France |
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Abstract: | This article seeks to offer a systematic approach to establishing a reliable network of facilities in closed loop supply chains (CLSCs) under uncertainties. Facilities that are located in this article concurrently satisfy both traditional objective functions and reliability considerations in CLSC network designs. To attack this problem, a novel mathematical model is developed that integrates the network design decisions in both forward and reverse supply chain networks. The model also utilizes an effective reliability approach to find a robust network design. In order to make the results of this article more realistic, a CLSC for a case study in the iron and steel industry has been explored. The considered CLSC is multi-echelon, multi-facility, multi-product and multi-supplier. Furthermore, multiple facilities exist in the reverse logistics network leading to high complexities. Since the collection centres play an important role in this network, the reliability concept of these facilities is taken into consideration. To solve the proposed model, a novel interactive hybrid solution methodology is developed by combining a number of efficient solution approaches from the recent literature. The proposed solution methodology is a bi-objective interval fuzzy possibilistic chance-constraint mixed integer linear programming (BOIFPCCMILP). Finally, computational experiments are provided to demonstrate the applicability and suitability of the proposed model in a supply chain environment and to help decision makers facilitate their analyses. |
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Keywords: | closed loop supply chain network design reliability interval programming fuzzy possibilistic chance-constrained programming |
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