Benders’ decomposition based exact solution method for multi-manned assembly line balancing problem with walking workers

被引:0
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作者
Murat Şahin
Talip Kellegöz
机构
[1] Celal Bayar University,Department of Industrial Engineering
[2] Gazi University,Graduate School of Natural and Applied Sciences
[3] Gazi University,Department of Industrial Engineering
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关键词
Mathematical programming; Multi-manned assembly lines; Benders; Decomposition; Exact solution method; Assembly line balancing;
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摘要
This article considers multi-manned assembly line balancing problems with walking workers. The objective of the problem is the minimization of number of workers and workstations simultaneously. Several exact-solution algorithms based on Benders’ decomposition are proposed to solve the problem optimally. In one of the algorithms a constructive heuristic that generates effective task-worker assignments and some problem-specific symmetry breaking constraints are used. Moreover, the solutions obtained by meta-heuristic in the literature are used as starting points to increase the performance of proposed decomposition methods. A benchmark set of 99 instances are used to analyze the performance of the proposed exact methods, contribution of the developed heuristic and the ability of Benders’ decomposition on improving the starting solutions. Our results indicate a significiant improvement in the optimal solvability of the problem for larger-sized instances. Suggested methods also improve the results of the meta-heuristic method for significant number of instances. Consequntly, proposed methods solved most of instances optimally and they are able to find the optimal solutions of 17 instances that cannot be solved optimally with previous methods.
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页码:507 / 540
页数:33
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