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A real-life Multi Depot Multi Period Vehicle Routing Problem with a Heterogeneous Fleet: Formulation and Adaptive Large Neighborhood Search based Matheuristic

机译:异构舰队的现实生活中的多仓库多周期车辆路径问题:公式化和基于自适应大邻域搜索的数学

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In this paper, a new rich Vehicle Routing Problem that could arise in a real life context is introduced and formalized: the Multi Depot Multi Period Vehicle Routing Problem with a Heterogeneous Fleet. The goal of the problem is to minimize the total delivery cost. A heterogeneous fleet composed of vehicles with different capacity, characteristics (i.e. refrigerated vehicles) and hourly costs is considered. A limit on the maximum route duration is imposed. Unlike what happens in classical multi-depot VRP, not every customer may/will be served by all the vehicles or from all the depots. The planning horizon, as in most real life applications, consists of multiple periods, and the period in which each route is performed is a variable of the problem. The set of periods, within the time horizon, in which the delivery may be carried out is known for each customer. A Mixed Integer Programming (MIP) formulation for MDMPVRPHF is presented in this paper, and an Adaptive Large Neighborhood Search (ALNS) based Matheuristic approach is proposed, in which different destroy operators are defined. Computational results, pertaining to realistic instances, which show the effectiveness of the proposed method, are provided. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在本文中,引入并形式化了可能在现实生活中出现的新的丰富的车辆路径问题:具有异构车队的多仓库多周期车辆路径问题。该问题的目的是使总交付成本最小化。考虑由不同容量,特性(即冷藏车)和每小时费用组成的车辆组成的异构车队。限制了最大路由持续时间。与传统的多仓库VRP中发生的情况不同,并非所有汽车或所有仓库都可以/将为每个客户服务。在大多数实际应用中,规划范围由多个时期组成,并且执行每条路线的时期都是问题的变量。每个客户都知道在时间范围内可以执行交付的一组时间段。提出了一种针对MDMPVRPHF的混合整数规划(MIP)公式,并提出了一种基于自适应大邻域搜索(ALNS)的数学方法,其中定义了不同的破坏算子。提供了与实际情况相关的计算结果,这些结果表明了所提出方法的有效性。 (C)2015 Elsevier Ltd.保留所有权利。

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