Real-World Pickup and Delivery Problem with Transfers

Václav Sobotka, Hana Rudová
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引用次数: 1

Abstract

The pickup and delivery problem with transfers generalizes the classical pickup and delivery problem (PDP) by allowing the vehicles to exchange request loads at designated transfer points. Transfers often lead to substantial reductions in transportation costs, yet they come with a significant burden of additional computational complexity. Even meta-heuristic methods are thus limited to instances of at most lower hundreds of requests leaving the desirable benefits unreachable for larger instances. Our approach bypasses the complexities inherent to current methods by deciding about the transfers apriori and thus reducing the problem to a PDP instance. To make as informed decisions as possible, we analyze a broader set of characteristics that may be used to carry out the apriori decisions. We opt to derive and examine multiple such PDP instances to cover different transfer choices. Our analysis of the derived PDP instances then allows their efficient processing in parallel. The proposed framework addresses a large-scale freight transportation problem with real-world characteristics and transfers where typical instances count over 1,200 requests and 300 vehicles. We show the potential of the proposed framework on both real-world and synthetic instances with up to 1,500 requests. The experiments demonstrate that substantial savings may be achieved within favorable runtimes even for very large instances.
现实世界中的接送问题
通过允许车辆在指定的转运点交换请求载荷,带转运的取货问题是经典取货问题(PDP)的推广。传输通常会导致运输成本的大幅降低,但它们带来了额外计算复杂性的重大负担。因此,即使是元启发式方法也被限制在最多只有几百个请求的实例中,这使得更大的实例无法获得理想的好处。我们的方法通过决定先验的传输来绕过当前方法固有的复杂性,从而将问题减少到PDP实例。为了做出尽可能明智的决策,我们分析了一组更广泛的特征,这些特征可能用于执行先验决策。我们选择推导和检查多个这样的PDP实例,以涵盖不同的传输选择。然后,我们对派生的PDP实例进行分析,从而允许对它们进行高效的并行处理。提议的框架解决了具有现实世界特征和转移的大规模货物运输问题,其中典型实例超过1,200个请求和300辆车辆。我们展示了建议的框架在实际实例和合成实例上的潜力,最多有1500个请求。实验表明,即使对于非常大的实例,在有利的运行时也可以实现大量的节省。
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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