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A greedy variable neighborhood search heuristic for the maximal covering location problem with fuzzy coverage radii

机译:带有模糊覆盖半径的最大覆盖位置问题的贪婪变量邻域搜索启发式

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摘要

The maximal covering location problem (MCLP) seeks location of facilities on a network, so as to maximize the total demand within a pre-defined distance or travel time of facilities (which is called coverage radius). Most of the real-world applications of MCLP comprise many demand nodes to be covered. Moreover, uncertainty is ubiquitous in most of the real-world covering location problems, which are solved for a long-term horizon. Therefore, this paper studies a large-scale MCLP on the plane with fuzzy coverage radii under the Hurwicz criterion. In order to solve the problem, a combination of variable neighborhood search (VNS) and fuzzy simulation is offered. Test problems with up to 2500 nodes and different settings show that VNS is competitive, since it is able to find solutions with gaps all below 1.5% in much less time compared to exact algorithms.
机译:最大覆盖位置问题(MCLP)在网络上查找设施的位置,以便在设施的预定距离或行进时间(称为覆盖半径)内最大化总需求。 MCLP的大多数实际应用程序包含许多要覆盖的需求节点。此外,在大多数涉及位置问题的现实世界中,不确定性无处不在,可以长期解决。因此,本文在Hurwicz准则下研究具有模糊覆盖半径的平面上的大规模MCLP。为了解决该问题,提供了可变邻域搜索(VNS)和模糊仿真的结合。在多达2500个节点和不同设置的情况下进行的测试问题表明,VNS具有竞争力,因为与精确算法相比,它能够在不到1.5%的时间内找到差距都小于1.5%的解决方案。

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