Hybrid Meta-heuristics Approach for Solving Supply Chain Network Model under Disruption Risk

Chuluunsukh Anudari, YoungSu Yun, M. Gen
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Abstract

A supply chain network (SCN) model which considers facility and route disruptions simultaneously is proposed in this paper. Since most of conventional literature have focused either on facility disruption solely or on route disruption solely, the simultaneous consideration of facility and route disruptions can improve the flexibility of the implementation in the SCN model. The SCN model under the disruptions is represented as a mathematical formulation and a hybrid meta-heuristics (GA-VNS) approach which combines genetic algorithm (GA) with variable neighborhood search (VNS) is used for the mathematical formulation. In numerical experiment, two scaled SCN models are used for comparing the performance of the GA-VNS approach with those of some conventional meta-heuristics approaches. Experimental results prove that the GA-VNS approach is more robust than conventional meta-heuristics approaches, and the flexibility of the SCN model under the disruptions are also improved.
破坏风险下供应链网络模型的混合元启发式求解方法
提出了一种同时考虑设备和路线中断的供应链网络模型。由于大多数传统文献要么只关注设施中断,要么只关注路线中断,因此同时考虑设施和路线中断可以提高SCN模型实施的灵活性。将干扰下的SCN模型表示为数学表达式,并采用遗传算法和可变邻域搜索相结合的混合元启发式(GA-VNS)方法进行数学表达式。在数值实验中,利用两个尺度SCN模型比较了GA-VNS方法与一些传统的元启发式方法的性能。实验结果表明,GA-VNS方法比传统的元启发式方法具有更强的鲁棒性,同时也提高了SCN模型在干扰下的灵活性。
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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