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Local search based metaheuristics for the robust vehicle routing problem with discrete scenarios

机译:基于局部搜索的元启发式算法用于离散场景下的鲁棒车辆路径问题

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The Capacitated Vehicle Routing Problem (CVRP) is extended here to handle uncertain arc costs without resorting to probability distributions, giving the Robust VRP (RVRP). The unique set of arc costs in the CVRP is replaced by a set of discrete scenarios. A scenario is for instance the travel time observed on each arc at a given traffic hour. The goal is to build a set of routes using the lexicographic min-max criterion: the worst cost over all scenarios is minimized but ties are broken using the other scenarios, from the worst to the best. This version of robust CVRP has never been studied before. A Mixed Integer Linear Program (MILP), two greedy heuristics, a local search and four metaheuristics are proposed: a Greedy Randomized Adaptive Search Procedure, an Iterated Local Search (ILS), a Multi-Start ILS (MS-ILS), and an MS-ILS based on Giant Tours (MS-ILS-GT) converted into feasible routes via a lexicographic splitting procedure. The greedy heuristics provide the other algorithms with good initial solutions. Tests on small instances (10-20 customers, 2-3 vehicles, 10-30 scenarios) show that the four metaheuristics retrieve all optima found by the MILP. On larger cases with 50-100 customers, 5-20 vehicles and 10-20 scenarios, MS-ILS-GT dominates the other approaches. As our algorithms share the same components (initial heuristic, local search), the positive contribution of using the giant tour approach is confirmed on the RVRP. (C) 2015 Elsevier B.V. All rights reserved.
机译:在此扩展了有能力车辆路径问题(CVRP),以处理不确定的电弧成本,而无需借助概率分布,从而获得了稳健的VRP(RVRP)。 CVRP中一组独特的电弧成本被一组离散方案所替代。场景是例如在给定的交通时间在每个弧线上观察到的行驶时间。目标是使用字典最小-最大准则构建一组路由:将所有方案中的最差成本降至最低,但使用其他方案(从最坏到最佳)断开联系。此版本的健壮CVRP从未研究过。提出了混合整数线性程序(MILP),两个贪婪启发式算法,局部搜索和四个元启发式算法:贪婪随机自适应搜索过程,迭代局部搜索(ILS),多起点ILS(MS-ILS)和通过大字典分割程序,将基于Giant Tours的MS-ILS(MS-ILS-GT)转换为可行的路线。贪婪启发式算法为其他算法提供了良好的初始解。在小型实例(10-20个客户,2-3辆车,10-30个场景)上进行的测试表明,这四种元启发式方法检索了MILP发现的所有最优值。在拥有50-100个客户,5-20辆汽车和10-20个场景的较大案例中,MS-ILS-GT主导了其他方法。由于我们的算法共享相同的组成部分(初始启发式搜索,局部搜索),因此在RVRP上证实了使用巨型游览方法的积极贡献。 (C)2015 Elsevier B.V.保留所有权利。

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