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A genetic and set partitioning two-phase approach for the vehicle routing problem with time windows

机译:带时间窗的车辆路径问题的遗传和集合划分两阶段方法

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The Vehicle Routing Problem with Time Windows (VRPTW) is a well-known and complex combinatorial problem, which has received considerable attention in recent years. This problem has been addressed using many different techniques including both exact and heuristic methods. The VRPTW benchmark problems of Solomon [Algorithms for the vehicle routing and scheduling problems with time window constraints, Operations Research 1987; 35(2): 254-65] have been most commonly chosen to evaluate and compare all algorithms. Results from exact methods have been improved considerably because of parallel implementations and modern branch-and-cut techniques. However, 24 out of the 56 high order instances from Solomon's original test set still remain unsolved. Additionally, in many cases a prohibitive time is needed to find the exact solution. Many of the heuristic methods developed have proved to be efficient in identifying good solutions in reasonable amounts of time. Unfortunately, whilst the research efforts based on exact methods have been focused on the total travel distance, the focus of almost all heuristic attempts has been on the number of vehicles. Consequently, it is more difficult to compare and take advantage of the strong points from each approach. This paper proposes a robust heuristic approach for the VRPTW using travel distance as the main objective through an efficient genetic algorithm and a set partitioning formulation. The tests were produced using real numbers and truncated data type, allowing a direct comparison of its results against previously published heuristic and exact methods. Furthermore, computational results show that the proposed heuristic approach outperforms all previously known and published heuristic methods in terms of the minimal travel distance.
机译:带时间窗的车辆路径问题(VRPTW)是众所周知的复杂组合问题,近年来受到了相当大的关注。已经使用许多不同的技术(包括精确方法和启发式方法)解决了该问题。所罗门的VRPTW基准测试问题[带有时间窗约束的车辆路径和调度问题的算法,Operations Research,1987; [35(2):254-65]最常被选择来评估和比较所有算法。由于并行实现和现代的分支剪切技术,精确方法的结果得到了很大的改善。但是,所罗门原始测试集中的56个高阶实例中有24个仍未解决。此外,在许多情况下,需要花费大量时间才能找到确切的解决方案。事实证明,开发的许多启发式方法可以有效地在合理的时间内确定好的解决方案。不幸的是,尽管基于精确方法的研究工作集中在总行驶距离上,但几乎所有启发式尝试的焦点都在车辆数量上。因此,比较和利用每种方法的优点更加困难。本文提出了一种鲁棒的启发式方法,通过有效的遗传算法和集合划分公式,以行进距离为主要目标的VRPTW。测试是使用实数和截断的数据类型进行的,可以将其结果与以前发布的启发式方法和精确方法进行直接比较。此外,计算结果表明,就最小行驶距离而言,所提出的启发式方法优于所有先前已知和公开的启发式方法。

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