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A guided neighborhood search applied to the split delivery vehicle routing problem.

机译:引导式邻域搜索应用于拆分式配送车辆路径问题。

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摘要

The classic vehicle routing problem considers the distribution of goods to geographically scattered customers from a central depot using a homogeneous fleet of vehicles with finite capacity. Each customer has a known demand and can be visited by exactly one vehicle. Each vehicle services the assigned customers in such a way that all customers are fully supplied and the total service does not exceed the vehicle capacity. In the split delivery vehicle routing problem, a customer can be visited by more than one vehicle, i.e., a customer demand can be split between various vehicles. Allowing split deliveries has been proven to potentially reduce the operational costs of the fleet.;This study efficiently solves the split delivery vehicle routing problem using three new approaches. In the first approach, the problem is solved in two stages. During the first stage, an initial solution is found by means of a greedy approach that can produce high quality solutions comparable to those obtained with existing sophisticated approaches. The greedy approach is based on a novel concept called the route angle control measure that helps to produce spatially thin routes and avoids crossing routes. In the second stage, this constructive approach is extended to an iterative approach using adaptive memory concepts, and then a variable neighborhood descent process is added to improve the solution obtained.;A new solution diversification scheme is presented in the second approach based on concentric rings centered at the depot that partitions the original problem. The resulting sub-problems are then solved using the greedy approach with route angle control measures. Different ring settings produce varied partitions and thus different solutions to the original problem are obtained and improved via a variable neighborhood descent.;The third approach is a learning procedure based on a set or population of solutions. Those solutions are used to find attractive attributes and construct new solutions within a tabu search framework. As the search progresses, the existing population evolves, better solutions are included in it whereas bad solutions are removed from it. The initial set is constructed using the greedy approach with the route angle control measure whereas new solutions are created using an adaptation of the well known savings algorithm of Clarke and Wright (1964) and improved by means of an enhanced version of the variable neighborhood descent process. The proposed approaches are tested on benchmark instances and results are compared with existing implementations.
机译:经典的车辆选路问题考虑的是使用有限容量的同类车辆从中央仓库向地理位置分散的客户分配货物。每个客户都有一个已知的需求,并且可以乘坐一辆汽车来拜访它。每辆车都以这样一种方式为分配的客户提供服务:所有客户都得到充分供应,并且总服务不超过车辆的容量。在分配运输车辆的路线选择问题中,一个以上的车辆可以拜访客户,即,可以在各种车辆之间分配客户需求。事实证明,允许分批交货可以潜在地降低车队的运营成本。该研究使用三种新方法有效地解决了分批交货车辆路线问题。第一种方法是分两个阶段解决问题。在第一阶段,通过贪婪的方法找到了初始解决方案,该方法可以产生与使用现有复杂方法获得的解决方案可比的高质量解决方案。贪婪方法基于一种称为路径角度控制措施的新颖概念,该方法有助于生成空间上较细的路径并避免交叉路径。在第二阶段,将这种构造方法扩展为使用自适应内存概念的迭代方法,然后添加可变邻域下降过程以改善获得的解。;在第二种方法中,提出了一种基于同心环的新的解决方案多样化方案。集中在划分原始问题的仓库中心。然后,使用带有路径角控制措施的贪婪方法来解决所得的子问题。不同的环设置产生不同的分区,因此通过可变邻域下降获得并改善了对原始问题的不同解决方案。第三种方法是基于一组或一组解决方案的学习过程。这些解决方案用于在禁忌搜索框架内找到有吸引力的属性并构建新的解决方案。随着搜索的进行,现有的人口在不断发展,其中包括更好的解决方案,而不良的解决方案则从中删除。初始集合是使用贪婪方法和路径角度控制措施构建的,而新的解决方案是使用著名的Clarke和Wright(1964)的节省算法改编而来的,并通过可变邻域下降过程的增强版进行了改进。所提出的方法在基准实例上进行了测试,并将结果与​​现有实施方案进行了比较。

著录项

  • 作者

    Aleman, Rafael E.;

  • 作者单位

    Wright State University.;

  • 授予单位 Wright State University.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 218 p.
  • 总页数 218
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;
  • 关键词

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