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Modeling the shelter site location problem using chance constraints: A case study for Istanbul

机译:使用机会限制建模遮蔽网站位置问题:伊斯坦布尔的案例研究

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摘要

In this work, we develop and test a new modeling framework for the shelter site location problem under demand uncertainty. In particular, we propose a maxmin probabilistic programming model that includes two types of probabilistic constraints: one concerning the utilization rate of the selected shelters and the other concerning the capacity of those shelters. By invoking the central limit theorem we are able to obtain an optimization model with a single set of non-linear constraints which, nonetheless, can be approximated using a family of piecewise linear functions. The latter, in turn, can be modeled mathematically using integer variables. Eventually, an approximate model is obtained, which is a mixed-integer linear programming model that can be tackled by an off-the-shelf solver. Using the proposed reformulation we are able to solve instances of the problem using data associated with the Kartal district in Istanbul, Turkey. We also consider a large-scale instance of the problem by making use of data for the whole Anatolian side of Istanbul. The results obtained are presented and discussed in the paper. They provide clear evidence that capturing uncertainty in the shelter site location problem by means of probabilistic constraints may lead to solutions that are much different from those obtained when a deterministic counterpart is considered. Furthermore, it is possible to observe that the probabilities embedded in the probabilistic constraints have a clear influence in the results, thus supporting the statement that a probabilistic programming modeling framework, if appropriately tuned by a decision maker, can make a full difference when it comes to find good solutions for the problem. (C) 2018 Elsevier B.V. All rights reserved.
机译:在这项工作中,我们在需求不确定性下开发和测试庇护站点位置问题的新建模框架。特别地,我们提出了一种MAXMIN概率编程模型,其包括两种类型的概率约束:一个关于所选避难所的利用率的概率约束,另一个关于这些避难所的容量。通过调用中央限位定理,我们能够获得具有单组非线性约束的优化模型,仍然可以使用一系列分段线性函数来近似。反过来,后者可以使用整数变量在数学上进行建模。最终,获得了近似模型,这是一种混合整数线性编程模型,可以由搁板的求解器来解决。使用拟议的重构,我们能够使用与土耳其伊斯坦布尔的卡尔塔尔区相关的数据解决问题的实例。我们还通过利用伊斯坦布尔的整个Anatolian侧的数据来考虑一个大规模的问题实例。在纸上提出和讨论了所得结果。它们提供了明确的证据,即通过概率约束捕获庇护站点位置问题的不确定性可能导致与考虑确定性对应物时获得的解决方案。此外,可以观察到概率约束中嵌入的概率在结果中具有明显的影响,从而支持概率编程建模框架的声明,如果由决策者适当调整,可以在它到来时完全不同找到问题的好解决方案。 (c)2018年elestvier b.v.保留所有权利。

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