设施位置处于中断状态

Chun-Lai Cheng, Y. Adulyasak, Louis-Martin Rousseau
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引用次数: 9

摘要

设施网络可能因停电、恶劣天气条件或自然灾害等原因而中断,而这些事件的概率可能难以估计。这可能导致昂贵的追索权决策,因为客户无法得到计划设施的服务。本文研究了考虑中断风险的固定收费定位问题(FLP)。采用两阶段鲁棒优化方法,此时此地做出设施选址决策,在设施可用性的不确定性信息暴露后做出客户重新分配的追索权决策。我们实现了一种列约束生成(C&CG)算法来精确求解鲁棒模型。而不是依赖于二元化或重新表述技术来处理子问题,正如在文献中常见的那样,我们使用基于线性规划的枚举方法,使我们能够考虑到设备故障的离散不确定性集。当二元化技术不能应用于子问题时,这也提供了处理这种情况的灵活性。我们进一步为实际大小的实例开发了一个近似方案。数值实验表明,C&CG算法在鲁棒FLP和鲁棒p中值问题上都优于现有方法。
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Robust Facility Location Under Disruptions
Facility networks can be disrupted by, for example, power outages, poor weather conditions, or natural disasters, and the probabilities of these events may be difficult to estimate. This could lead to costly recourse decisions because customers cannot be served by the planned facilities. In this paper, we study a fixed-charge location problem (FLP) that considers disruption risks. We adopt a two-stage robust optimization method, by which facility location decisions are made here and now and recourse decisions to reassign customers are made after the uncertainty information on the facility availability has been revealed. We implement a column-and-constraint generation (C&CG) algorithm to solve the robust models exactly. Instead of relying on dualization or reformulation techniques to deal with the subproblem, as is common in the literature, we use a linear programming–based enumeration method that allows us to take into account a discrete uncertainty set of facility failures. This also gives the flexibility to tackle cases when the dualization technique cannot be applied to the subproblem. We further develop an approximation scheme for instances of a realistic size. Numerical experiments show that the proposed C&CG algorithm outperforms existing methods for both the robust FLP and the robust p-median problem.
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