设计弹性供应链网络:多目标数据驱动的分布式稳健优化方法

IF 4.1 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computers & Operations Research Pub Date : 2024-10-11 DOI:10.1016/j.cor.2024.106868
Shengjie Chen, Yanju Chen
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引用次数: 0

摘要

供应链中断的不确定性给许多现实问题的决策带来了巨大挑战。本文针对中断情况下的弹性供应链网络(RSCN)设计问题,开发了一种新的多目标数据驱动分布式鲁棒优化(MDDRO)模型,包括总成本最小化、碳排放最小化和交付时间最小化。在供应链中断的情况下,产品能否正常供应并满足实际需求的重要性不言而喻。在处理所考虑的不确定需求的部分概率分布信息时,本文使用了数据驱动的 Wasserstein-Moment 含混集(WMAS),该含混集结合了 Wasserstein 度量和 Moment 信息,并使用稳健的对应方法将所建立的模型转化为可操作的近似形式。给出了带有 Wasserstein-Moment 模糊机会约束的 MDDRO 模型最优解的有限样本性能保证。构建了一种加速的分支和切割算法(BCA)来求解 MDDRO 模型。最后,通过对实际案例的研究和关键参数的敏感性分析,提出了一些管理启示。
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Designing a resilient supply chain network: A multi-objective data-driven distributionally robust optimization method
Uncertainty of supply chain disruption poses a significant challenge to decision-making in many real-life problems. In this paper, a new multi-objective data-driven distributionally robust optimization (MDDRO) model for the resilient supply chain network (RSCN) design problem under disruption scenario is developed, which includes minimizing the total cost, carbon emissions, and delivery time. In the context of supply chain disruption, it is important self-evidently that products can be supplied normally and the practical demand can be met. In handling the partial probability distribution information of the considered uncertain demand, this paper uses a data-driven Wasserstein-Moment ambiguity set (WMAS), which incorporate the Wasserstein metric and Moment information, and a robust counterpart to transform the developed model into a tractable approximation form. The finite-sample performance guarantee of the optimal solution of MDDRO model with Wasserstein-Moment ambiguous chance constraint is given. An accelerated Branch and cut algorithm (BCA) is constructed to solve the MDDRO model. Finally, through the investigation of a real-life case and sensitivity analysis of key parameters, some managerial insights are put forward.
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来源期刊
Computers & Operations Research
Computers & Operations Research 工程技术-工程:工业
CiteScore
8.60
自引率
8.70%
发文量
292
审稿时长
8.5 months
期刊介绍: Operations research and computers meet in a large number of scientific fields, many of which are of vital current concern to our troubled society. These include, among others, ecology, transportation, safety, reliability, urban planning, economics, inventory control, investment strategy and logistics (including reverse logistics). Computers & Operations Research provides an international forum for the application of computers and operations research techniques to problems in these and related fields.
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