A genetic algorithm for vehicle routing in logistic networks with practical constraints

Grzegorz Koloch, Michał Lewandowski, Marcin Zientara, Grzegorz Grodecki, Piotr Matuszak, Igor Kantorski, Adam Nowacki
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Abstract

We optimise a postal delivery problem with time and capacity constraints imposed on vehicles and nodes of the logistic network. Time constraints relate to the duration of routes, whereas capacity constraints concern technical characteristics of vehicles and postal operation outlets. We consider a method which can be applied to a brownfield scenario, in which capacities of outlets can be relaxed and prospective hubs identified. As a solution, we apply a genetic algorithm and test its properties both in small case studies and in a simulated problem instance of a larger (i.e. comparable with real-world instances) size. We show that the genetic operators we employ are capable of switching between solutions based on direct origin-to-destination routes and solutions based on transfer connections, depending on what is more beneficial in a given problem instance. Moreover, the algorithm correctly identifies cases in which volumes should be shipped directly, and those in which it is optimal to use transfer connections within a single problem instance, if an instance in question requires such a selection for optimality. The algorithm is thus suitable for determining hubs and satellite locations. All considerations presented in this paper are motivated by real-life problem instances experienced by the Polish Post, the largest postal service provider in Poland, in its daily plans of delivering postal packages, letters and pallets.
具有实际约束的物流网络中车辆路径的遗传算法
我们优化的邮政配送问题,时间和能力的限制强加于车辆和物流网络的节点。时间限制涉及路线的持续时间,而能力限制涉及车辆和邮政业务网点的技术特性。我们考虑了一种可以应用于棕地场景的方法,在这种情况下,网点的容量可以放松,并确定未来的枢纽。作为解决方案,我们应用遗传算法并在小型案例研究和更大(即与现实世界实例相媲美)规模的模拟问题实例中测试其特性。我们表明,我们使用的遗传算子能够在基于直接起点到目的地路线的解决方案和基于传输连接的解决方案之间切换,这取决于在给定的问题实例中哪种更有益。此外,该算法正确地识别了应该直接运输卷的情况,以及在单个问题实例中使用传输连接是最优的情况,如果所讨论的实例需要这样的最优选择。因此,该算法适用于确定集线器和卫星的位置。本文中提出的所有考虑因素都是由波兰邮政(波兰最大的邮政服务提供商)在其每日递送邮政包裹、信件和托盘的计划中遇到的现实问题实例所激发的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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