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Multi-objective genetic algorithms for vehicle routing problem with time windows

机译:带时间窗的车辆路径问题的多目标遗传算法

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摘要

The Vehicle Routing Problem with Time windows (VRPTW) is an extension of the capacity constrained Vehicle Routing Problem (VRP). The VRPTW is NP-Complete and instances with 100 customers or more are very hard to solve optimally. We represent the VRPTW as a multi-objective problem and present a genetic algorithm solution using the Pareto ranking technique. We use a direct interpretation of the VRPTW as a multi-objective problem, in which the two objective dimensions are number of vehicles and total cost (distance). An advantage of this approach is that it is unnecessary to derive weights for a weighted sum scoring formula. This prevents the introduction of solution bias towards either of the problem dimensions. We argue that the VRPTW is most naturally viewed as a multi-objective problem, in which both vehicles and cost are of equal value, depending on the needs of the user. A result of our research is that the multi-objective optimization genetic algorithm returns a set of solutions that fairly consider both of these dimensions. Our approach is quite effective, as it provides solutions competitive with the best known in the literature, as well as new solutions that are not biased toward the number of vehicles. A set of well-known benchmark data are used to compare the effectiveness of the proposed method for solving the VRPTW.
机译:带时间窗的车辆路径问题(VRPTW)是容量受限的车辆路径问题(VRP)的扩展。 VRPTW是NP-Complete,拥有100个或更多客户的实例很难以最佳方式解决。我们将VRPTW表示为一个多目标问题,并提出使用Pareto排序技术的遗传算法解决方案。我们将VRPTW直接解释为一个多目标问题,其中两个目标维度是车辆数量和总成本(距离)。该方法的优点在于,不必为加权总和评分公式导出权重。这样可以防止对任何一个问题维度引入解决方案偏差。我们认为,VRPTW最自然地被视为一个多目标问题,根据用户的需求,其中车辆和成本都具有相等的价值。我们研究的结果是,多目标优化遗传算法返回了公平考虑这两个维度的一组解决方案。我们的方法非常有效,因为它提供了与文献中最著名的解决方案竞争的解决方案,以及不偏向车辆数量的新解决方案。使用一组众所周知的基准数据来比较所提出的方法解决VRPTW的有效性。

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