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Finding optimal solutions for vehicle routing problem with pickup and delivery services with time windows: A dynamic programming approach based on state-space-time network representations

机译:寻找带有时间窗的接送服务的车辆路径问题的最佳解决方案:一种基于状态-时空网络表示的动态编程方法

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Optimization of on-demand transportation systems and ride-sharing services involves solving a class of complex vehicle routing problems with pickup and delivery with time windows (VRPPDTW). This paper first proposes a new time-discretized multi-commodity network flow model for the VRPPDTW based on the integration of vehicles' carrying states within space-time transportation networks, so as to allow a joint optimization of passenger-to-vehicle assignment and turn-by-turn routing in congested transportation networks. Our three-dimensional state-space-time network construct is able to comprehensively enumerate possible transportation states at any given time along vehicle space-time paths, and further allows a forward dynamic programming solution algorithm to solve the single vehicle VRPPDTW problem. By utilizing a Lagrangian relaxation approach, the primal multi-vehicle routing problem is decomposed to a sequence of single vehicle routing sub-problems, with Lagrangian multipliers for individual passengers' requests being updated by sub-gradient-based algorithms. We further discuss a number of search space reduction strategies and test our algorithms, implemented through a specialized program in C++, on medium-scale and large-scale transportation networks, namely the Chicago sketch and Phoenix regional networks. (C) 2016 Elsevier Ltd. All rights reserved.
机译:按需运输系统和乘车共享服务的优化涉及解决带有时间窗(VRPPDTW)的提货和送货的一类复杂的车辆路线问题。本文首先基于时空运输网络中车辆载运状态的整合,为VRPPDTW提出了一种新的时间离散的多商品网络流模型,从而实现了客车分配和转弯的联合优化。拥挤的交通网络中的逐行路由。我们的三维状态-时空网络构造能够全面枚举沿车辆时空路径在任何给定时间的可能运输状态,并进一步允许前向动态规划求解算法来解决单车VRPPDTW问题。通过使用拉格朗日松弛方法,将原始的多车路线问题分解为一系列单车路线子问题,其中基于子梯度的算法更新了各个乘客的拉格朗日乘数。我们进一步讨论了许多搜索空间缩减策略,并测试了我们的算法,这些算法是通过C ++的专用程序在中型和大型运输网络(即Chicago sketch和Phoenix区域网络)上实现的。 (C)2016 Elsevier Ltd.保留所有权利。

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