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Exact solution methods for the multi-period vehicle routing problem with due dates

机译:随后的多时期车辆路由问题的确切解决方法

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In this paper we study the multi-period vehicle routing problem with due dates. A supplier has to determine a distribution plan to visit a set of customers over a given planning horizon. Each customer is associated with a release date and a due date, that is, the date at which the goods required by the customer become available at the supplier's depot, and the date by which the customer has to be visited, respectively. A fleet of capacitated vehicles is available at the depot to perform the distribution and the objective is to minimize the distribution costs and the costs related to delayed deliveries. New families of valid inequalities are presented that allow us to improve a branch-and-bound algorithm proposed in the literature. The new branch-and-bound algorithm reduces to 5.1% the optimality gap which is 12.1% for the known branch-and-bound on instances with one vehicle. A variable MIP neighborhood descent (VMND) algorithm is also presented, which speeds up the search for high quality solutions through a local search heuristic embedded in the branch-and-bound algorithm. Computational tests are performed to assess the quality of the VMND algorithm against the new branch-and-bound algorithm. The computational results show that the VMND algorithm improves 35 out of 80 solutions on instances with one vehicle, reducing the average optimality gap from 5.1% to 3.6%. It further matches the performance of the new branch-and-bound algorithm on another 35 instances. On instances with two and three vehicles the average optimality gap obtained by the VMND algorithm is 5.5% and 5.6%, respectively. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在本文中,我们研究了随期日期的多时期车辆路由问题。供应商必须确定在给定规划地平线上访问一套客户的分销计划。每个客户都与发布日期和截止日期相关联,即客户在供应商的仓库中提供的商品的日期,以及客户必须访问的日期。仓库提供了一支电容车辆,以执行分配,目的是最大限度地减少分配成本和与延迟交付相关的成本。提出了新的有效不等式的家庭,使我们能够改善文献中提出的分支和绑定算法。新的分支和绑定算法降低了5.1%的最优空隙,其具有一辆车的实例上的已知分支和绑定的12.1%。还提出了一种可变MIP邻域下降(VMND)算法,从而通过嵌入分支和绑定算法的本地搜索启发式来加速对高质量解决方案的搜索。执行计算测试以评估对新分支和绑定算法的VMND算法的质量。计算结果表明,VMND算法在具有一辆车辆的情况下改善了80个解决方案中的35个,将平均最优性差距从5.1%降至3.6%。它进一步匹配了新的分支和绑定算法在另一个35实例上的性能。在具有两个和三个车辆的情况下,VMND算法获得的平均最优性间隙分别为5.5%和5.6%。 (c)2019 Elsevier Ltd.保留所有权利。

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