具有设施规模决策和随机需求的位置路由问题的一种近似启发式算法

R. D. Tordecilla, Javier Panadero, A. Juan, C. L. Quintero-Araújo, J. Montoya-Torres
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引用次数: 1

摘要

位置路由是一个众所周知的问题,其中必须对设施的位置和车辆的路径进行决策。传统上,将固定的大小或容量分配给开放设施作为问题的输入参数。然而,现实世界的案例表明,决策者通常有一系列的规模选择。如果根据分配客户的需求准确地选择这个规模,那么位置决策和路由活动所增加的成本就会更小。然而,选择这个大小意味着额外的变量,使已经是np困难的问题更具挑战性。另外,考虑随机需求使得优化问题更加难以求解。因此,本文提出了一种相似启发式算法。它结合了元启发式的效率和模拟的能力来处理不确定性。一系列的计算实验表明,我们的方法可以有效地处理大中型实例。
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A Simheuristic Algorithm for the Location Routing Problem with Facility Sizing Decisions and Stochastic Demands
Location routing is a well known problem in which decisions about facility location and vehicle routing must be made. Traditionally, a fixed size or capacity is assigned to an open facility as the input parameter to the problem. However, real-world cases show that decision-makers usually have a set of size options. If this size is selected accurately according to the demand of allocated customers, then location decisions and routing activities would raise smaller cost. Nevertheless, choosing this size implies additional variables that make an already NP-hard problem even more challenging. In addition, considering stochastic demands contributes to making the optimization problem more difficult to solve. Hence, a simheuristic algorithm is proposed in this work. It combines the efficiency of metaheuristics and the capabilities of simulation to deal with uncertainty. A series of computational experiments show that our approach can efficiently deal with medium-large instances.
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