Strategic Robust Mixed Model Assembly Line Balancing Based on Scenario Planning

IF 5.2 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Weida Xu (徐炜达), Tianyuan Xiao (肖田元)
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引用次数: 39

Abstract

Assembly line balancing involves assigning a series of task elements to uniform sequential stations with certain restrictions. Decision makers often discover that a task assignment which is optimal with respect to a deterministic or stochastic/fuzzy model yields quite poor performance in reality. In real environments, assembly line balancing robustness is a more appropriate decision selection guide. A robust model based on the α worst case scenario is developed to compensate for the drawbacks of traditional robust criteria. A robust genetic algorithm is used to solve the problem. Comprehensive computational experiments to study the effect of the solution procedure show that the model generates more flexible robust solutions. Careful tuning the value of α allows the decision maker to balance robustness and conservativeness of assembly line task element assignments.

基于场景规划的战略鲁棒混合模型装配线平衡
装配线平衡涉及到将一系列任务元素分配给具有一定限制的统一顺序工作站。决策者经常发现,相对于确定性或随机/模糊模型的最优任务分配在现实中产生相当差的性能。在实际环境中,装配线平衡鲁棒性是更合适的决策选择指南。为了弥补传统鲁棒准则的不足,提出了一种基于α最坏情况的鲁棒模型。采用鲁棒遗传算法求解该问题。综合计算实验研究了该求解过程的效果,结果表明该模型产生的解更加灵活、鲁棒。仔细调整α值允许决策者平衡装配线任务元素分配的稳健性和保守性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
12.10
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0.00%
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2340
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