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The commodity-split multi-compartment capacitated arc routing problem

机译:商品分离多隔室电容电弧路由问题

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The purpose of this paper is to develop a data-driven matheuristic for the Commodity-Split Multi-Compartment Capacitated Arc Routing Problem (CSMC-CARP). This problem arises in curbside waste collection, where there are different recyclable waste types called fractions. The CSMC-CARP is defined on an undirected graph with a limited heterogeneous fleet of multi-compartment vehicle types based at a depot, where each compartment's capacity can vary depending on the waste fraction assigned to it and on the compression factor of that fraction in that vehicle type. The aim is to determine a set of least-cost routes starting and ending at the depot, such that the demand of each edge for each waste fraction is collected exactly once by one vehicle, without violating the capacity of any compartment. The CSMC-CARP consists of three decision levels: selecting the number of vehicles of each type, assigning waste fractions to the compartments of each selected vehicle, and routing the vehicles. Our three-phase algorithm decomposes the problem into incomplete solution representations and heuristically solves one or more decision levels at a time. The first phase selects a subset of attractive compartment assignments from all assignments of all vehicle types. The second phase solves the CSMC-CARP with an unlimited fleet of the selected assignments. This is done by our C-split tour splitting algorithm, which can simultaneously split a giant tour of required edges into feasible routes while making decisions on the fractions that are collected by each route. The third phase selects the set of best routes servicing all fractions of all required edges without exceeding the number of vehicles available of each type. The algorithm is applied to real-life instances arising from recyclable waste collection operations in Denmark, with graph sizes up to 6,149 nodes and 3,797 required edges, the waste sorted in three to six fractions, and four to six vehicle types with one to four compartments. Computational results show that the generated solutions favor combining different fractions together in vehicles with higher numbers of compartments, and that the algorithm adapts well to the characteristics of the data, in terms of the graph, vehicle types, degree of sorting, and to skewness in demand among waste fractions. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本文的目的是为商品分开多隔室电容电弧路由问题(CSMC-CARP)开发数据驱动的数学素描。路边废物收集中出现这个问题,其中有不同的可回收废物类型称为分数。 CSMC-CARP在一个过向的图形上定义,基于仓库的多隔室车辆类型的有限的异构车队定义,其中每个隔室的容量可以根据分配给它的废物分数和该分数的压缩因子而变化车辆类型。目的是确定在仓库中开始和结束的一组最小成本路线,使得每个废物部分的每个边缘的需求由一个车辆完全收集一次,而不违反任何隔室的容量。 CSMC-CARP由三个决策水平组成:选择每种类型的车辆数量,将废物分配给每个选定车辆的隔室,并路由车辆。我们的三相算法将问题分解为不完整的解决方案表示,并一次启发式解决一个或多个决策级别。第一阶段从所有车辆类型的所有分配中选择有吸引力的隔间分配的子集。第二阶段用所选作业的无限舰队解决CSMC-Carp。这是由我们的C型拆分巡回算法完成的,这可以同时将所需边缘的巨大巡视分为可行的路线,同时在每个路线收集的分数上做出决定。第三阶段选择为所有所需边缘的所有分数提供服务的最佳路线集,而不超过每种类型的车辆数量。该算法应用于丹麦可回收废物收集操作产生的现实实例,具有高达6,149个节点的图表和3,797个所需的边缘,废物分选为三到六个分数,以及四到六个车辆类型,一到四个隔室。 。计算结果表明,所产生的解决方案有利于将不同的分数组合在具有较高数量的隔室的车辆中,并且该算法根据图形,车辆类型,分类程度以及偏差来适应数据的特征。废物分数中的需求。 (c)2020 elestvier有限公司保留所有权利。

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