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A Simulation Based Restricted Dynamic Programming approach for the Green Time Dependent Vehicle Routing Problem

机译:基于仿真的绿色时间相关车辆路径问题的受限动态规划方法

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This paper addresses a Green Time Dependent Capacitated Vehicle Routing Problem that accounts for transportation emissions. The problem has been formulated and solved using Dynamic Programming approach. The applicability of Dynamic Programming in large sized problems is, however, limited due to exponential memory and computation time requirements. Therefore, we propose a generic heuristic approach, Simulation Based Restricted Dynamic Programming, based on weighted random sampling, the classical Restricted Dynamic Programming heuristic and simulation for the model to solve large sized instances. These decision support tools can be used to aid logistics decision-making processes in urban distribution planning. The added values of the proposed model and the heuristic have been shown based on a real life urban distribution planning problem between a pharmaceutical warehouse and a set of pharmacies, and ten relatively larger instances. The results of the numerical experiments show that the Simulation Based Restricted Dynamic Programming heuristic can provide promising results within relatively short computation times compared to the classical Restricted Dynamic Programming for the Green Time Dependent Capacitated Vehicle Routing Problem. The Simulation Based Restricted Dynamic Programming algorithm yields 2.3% lower costs within 93.1% shorter computation times on average, compared to the classical Restricted Dynamic Programming. Moreover, the analyses on the effect of traffic congestion in our base case reveal that 2.3% benefit on total emissions and 0.9% benefit on total routing cost could be obtained if vehicles start delivery after heavy congested period is passed. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文解决了绿色时变容量车辆路径问题,该问题解决了运输排放问题。该问题已使用动态编程方法制定并解决。但是,由于指数存储和计算时间的要求,动态编程在大型问题中的适用性受到限制。因此,我们提出了一种通用的启发式方法,即基于加权随机采样的基于仿真的受限动态规划,经典的受限动态规划启发式算法以及用于求解大型实例的模型仿真。这些决策支持工具可用于协助城市配送规划中的物流决策过程。基于药品仓库和一组药房之间的现实生活中的城市配送规划问题,以及十个相对较大的实例,显示了所提出模型的附加值和启发式方法。数值实验结果表明,与基于格林时间依赖的车辆通行受限问题的经典受限动态规划相比,基于仿真的受限动态规划启发式算法可以在较短的计算时间内提供令人满意的结果。与传统的受限动态规划相比,基于仿真的受限动态规划算法可将成本降低2.3%,平均计算时间缩短93.1%。此外,在我们的基本案例中,对交通拥堵的影响进行分析后发现,如果车辆在严重拥堵时期过后才开始交付,则可实现对总排放量的2.3%的收益和对总路线成本的0.9%的收益。 (C)2017 Elsevier Ltd.保留所有权利。

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