具有对接和后进先出约束的车辆动态路径的成本函数逼近方法

Markó Horváth, Tamás Kis, Péter Györgyi
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引用次数: 0

摘要

本文研究了一个具有对接约束的动态取货问题。在给定的地点,有一个相同的车队来满足取货和送货的要求。车辆可以装载到最大容量,而卸载必须遵循后进先出(LIFO)规则。这些地点用于装卸的对接端口数量有限,这可能迫使车辆等待。这个问题是动态的,因为运输请求在一天内实时到达。因此,车辆的路线需要动态确定。我们的目标是满足所有的要求,从而将延误处罚和差旅费用的组合降到最低。我们提出了一种基于成本函数近似的求解方法。在每个决策时期,我们用摄动目标函数来解决各自的优化问题,以确保解决方案能够适应新的请求。我们惩罚等待时间和闲置车辆。提出了一种基于可变邻域搜索的优化算法,并在此基础上引入了一种新的局部搜索算子。我们使用广泛采用的基准数据集来评估我们的方法,结果表明我们的方法明显优于当前最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A cost function approximation method for dynamic vehicle routing with docking and LIFO constraints
In this paper, we study a dynamic pickup and delivery problem with docking constraints. There is a homogeneous fleet of vehicles to serve pickup-and-delivery requests at given locations. The vehicles can be loaded up to their capacity, while unloading has to follow the last-in-first-out (LIFO) rule. The locations have a limited number of docking ports for loading and unloading, which may force the vehicles to wait. The problem is dynamic since the transportation requests arrive real-time, over the day. Accordingly, the routes of the vehicles are to be determined dynamically. The goal is to satisfy all the requests such that a combination of tardiness penalties and traveling costs is minimized. We propose a cost function approximation based solution method. In each decision epoch, we solve the respective optimization problem with a perturbed objective function to ensure the solutions remain adaptable to accommodate new requests. We penalize waiting times and idle vehicles. We propose a variable neighborhood search based method for solving the optimization problems, and we apply two existing local search operators, and we also introduce a new one. We evaluate our method using a widely adopted benchmark dataset, and the results demonstrate that our approach significantly surpasses the current state-of-the-art methods.
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