A hybrid multi-objective algorithm to solve a cellular manufacturing scheduling problem with human resource allocation

A Cellular Manufacturing System (CMS) is a suitable system for the economic manufacture of part families. Scheduling the manufacturing cells plays an effective role in successful implementation of the manufacturing system. Due to the fact that in the CMS, bottleneck machine and human resources are t...

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Vydáno v:Journal of Applied Research on Industrial Engineering Ročník 9; číslo 2; s. 272 - 287
Hlavní autoři: Vahid Razmjoei, Iraj Mahdavi, Selma Gutmen
Médium: Journal Article
Jazyk:angličtina
Vydáno: Ayandegan Institute of Higher Education, Iran 01.06.2022
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ISSN:2538-5100, 2676-6167
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Shrnutí:A Cellular Manufacturing System (CMS) is a suitable system for the economic manufacture of part families. Scheduling the manufacturing cells plays an effective role in successful implementation of the manufacturing system. Due to the fact that in the CMS, bottleneck machine and human resources are two important factors, which so far have not been studied simultaneously in a mathematical model, there should be a model to consider them. Therefore, this research develops a bi-objective model for CMS in a three-dimensional space of machine-part and human resources. The main objective is to minimize the maximum completion time of all tasks in the system and reduce the number of intercellular translocation based on bottleneck machines’ motion and human resources. Due to the NP-hardness of the studied problem, applying the conventional solution methods is very time-consuming, and is impossible in large dimensions. Therefore, the use of metaheuristic methods will be useful. The accuracy of the proposed model is investigated using LINGO by solving a small example. Then, to solve the problem in larger dimensions, a hybrid Multi-Objective Tabu Search-Genetic Algorithm (MO-TS-GA) is designed and numerical results are reported for several examples.
ISSN:2538-5100
2676-6167
DOI:10.22105/jarie.2021.279189.1282