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Title A Multi-Cycle And Multi-Echelon Location-Routing Problem For Integrated Reverse Logistics
ID_Doc 2782
Authors Xu X.; Liu W.; Jiang M.; Lin Z.
Year 2022
Published Industrial Management and Data Systems, 122, 10
DOI http://dx.doi.org/10.1108/IMDS-01-2022-0015
Abstract Purpose: The rapid development of smart cities and green logistics has stimulated a lot of research on reverse logistics, and the diversified data also provide the possibility of innovative research on location-routing problem (LRP) under reverse logistics. The purpose of this paper is to use panel data to assist in the study of multi-cycle and multi-echelon LRP in reverse logistics network (MCME-LRP-RLN), and thus reduce the cost of enterprise facility location. Design/methodology/approach: First, a negative utility objective function is generated based on panel data and incorporated into a multi-cycle and multi-echelon location-routing model integrating reverse logistics. After that, an improved algorithm named particle swarm optimization-multi-objective immune genetic algorithm (PSO-MOIGA) is proposed to solve the model. Findings: There is a paradox between the total cost of the enterprise and the negative social utility, which means that it costs a certain amount of money to reduce the negative social utility. Firms can first design an open-loop logistics system to reduce cost, and at the same time, reduce negative social utility by leasing facilities. Practical implications: This study provides firms with more flexible location-routing options by dividing them into multiple cycles, so they can choose the right option according to their development goals. Originality/value: This research is a pioneering study of MCME-LRP-RLN problem and incorporates data analysis techniques into operations research modeling. Later, the PSO algorithm was incorporated into the crossover of MOIGA in order to solve the multi-objective large-scale problems, which improved the convergence speed and performance of the algorithm. Finally, the results of the study provide some valuable management recommendations for logistics planning. © 2022, Emerald Publishing Limited.
Author Keywords LRP; Panel data; PSO-MOIGA; Reverse logistics


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