基于随机混合线性规划技术的中断风险下供应商选择

Faiza Hamdi, Ahmed Ghorbel, F. Masmoudi
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引用次数: 2

摘要

供应商选择是供应链管理的一个重要关键,主要与中断风险的存在有关。给定一组产品的客户订单,决策者需要决定从哪个供应商购买每个客户订单所需的定制部件,以最小化总成本并减轻中断风险的影响。文献中基于各种形式化建模技术开发了许多方法。本文将随机混合线性规划(MILP)技术应用于风险中断下的供应商选择问题。考虑了两组中断情景:(1)每个供应商独立的局部中断情景,以及(2)可能同时导致所有供应商的局部和全局中断情景。两个百分位数:风险价值(VaR)和条件风险价值(CVaR)用于模拟供应链中断的风险。通过计算期望成本零件的风险值,这些百分位数能够通过最小化每个零件的预期最坏情况来优化供应组合。本研究的延伸对于复杂供应链的风险分析具有重要意义。
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Supplier selection under disruption risks using Stochastic Mixed Linear Programming techniques
Supplier selection is an important key of supply chain management and mainly with the presence of disruption risks. Given a set of customer orders for products, the decision maker needs to decide from which supplier to purchase custom parts required for each customer order to minimize total cost and mitigate the impact of disruption risks. Many approaches have been developed in the literature based on various formal modeling techniques. In this paper, Stochastic Mixed Linear Program (MILP) techniques are used for the selection of suppliers under risk disruption. Two set of disruption scenarios are considered: (1) scenario with independent local disruption of each supplier, and (2) scenario with local and global disruption that may result in all suppliers simultaneously. The two percentiles: Value at risk (VaR) and conditional value at risk (CVaR) are used to model the risk of supply chain disruption. It be concluded that these percentiles are capable to optimizing the supply portfolio by minimizing expects worst-case per part via calculating the value at risk of expected cost part. The extension of this study seems very interesting for the risk analysis in complex supply chains.
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