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Two-stage absolute semi-deviation mean-risk stochastic programming: An application to the supply chain replenishment problem

机译:两阶段绝对半偏差均值风险随机规划:在供应链补货问题中的应用

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Conventionally, two-stage stochastic programs have been devised to minimize the expectation of recourse actions. However, in the presence of high data variability, the solutions from expected value models may not be robust, and hence weighted risk measures are introduced in the objective function. In this study, we consider a two-stage stochastic program with mean absolute semi-deviation (MASD) as a risk measure for an application in supply chain planning. Models with MASD lack block-angular structures; thus, they are not suitable for traditional decomposition algorithms and pose computational challenges. We therefore propose a heuristic procedure based on the expected excess risk measure for solving the model. Specifically, we propose a heuristic for a generic replenishment problem in supply chains with MASD risk measures. We evaluate the robustness of the MASD model solutions by comparing the fill rate for replenishment plans with the optimal solutions from deterministic and expected value models, and we demonstrate the efficacy of the heuristic based on extensive computational experiments. (C) 2019 Elsevier Ltd. All rights reserved.
机译:常规地,已经设计了两阶段的随机程序以最小化追索行动的期望。但是,在存在高数据可变性的情况下,期望值模型的解决方案可能并不可靠,因此在目标函数中引入了加权风险度量。在这项研究中,我们将具有平均绝对半偏差(MASD)的两阶段随机程序作为一种风险度量,用于供应链计划中的应用。具有MASD的模型缺少块角结构;因此,它们不适用于传统的分解算法并带来计算挑战。因此,我们提出了一种基于预期超额风险度量的启发式程序来求解模型。具体来说,我们针对具有MASD风险度量的供应链中的一般补货问题提出了一种启发式方法。我们通过将补给计划的填充率与确定性模型和期望值模型的最佳解决方案进行比较,来评估MASD模型解决方案的鲁棒性,并基于大量的计算实验证明了启发式方法的有效性。 (C)2019 Elsevier Ltd.保留所有权利。

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