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Adaptive memetic algorithm for minimizing distance in the vehicle routing problem with time windows

机译:带时间窗的车辆路径问题中距离最小化的自适应模因算法

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This paper presents an adaptive memetic algorithm to solve the vehicle routing problem with time windows (VRPTW). It is a well-known NP-hard discrete optimization problem with two objectives-to minimize the number of vehicles serving a set of geographically dispersed customers, and to minimize the total distance traveled in the routing plan. Although memetic algorithms have been proven to be extremely efficient in solving the VRPTW, their main drawback is an unclear tuning of their numerous parameters. Here, we introduce the adaptive memetic algorithm (AMA-VRPTW) for minimizing the total travel distance. In AMA-VRPTW, a population of solutions evolves with time. The parameters of the algorithm, including the selection scheme, population size and the number of child solutions generated for each pair of parents, are adjusted dynamically during the search. We propose a new adaptive selection scheme to balance the exploration and exploitation of the solution space. Extensive experimental study performed on the well-known Solomon's and Gehring and Homberger's benchmark sets confirms the efficacy and convergence capabilities of the proposed AMA-VRPTW. We show that it is very competitive compared with other state-of-the-art techniques. Finally, the influence of the proposed adaptive schemes on the AMA-VRPTW behavior and performance is investigated in a thorough sensitivity analysis. This analysis is complemented with the two-tailed Wilcoxon test for verifying the statistical significance of the results.
机译:本文提出了一种自适应模因算法来解决带时间窗的车辆路径问题(VRPTW)。这是一个众所周知的NP困难离散优化问题,它具有两个目标-最小化为一组地理位置分散的客户提供服务的车辆数量,并最小化路线规划中的总行驶距离。尽管模因算法已被证明在解决VRPTW方面非常有效,但其主要缺点是对其众多参数的调整不清楚。在这里,我们介绍了自适应模因算法(AMA-VRPTW),以最大程度地减少总行驶距离。在AMA-VRPTW中,随着时间的推移,解决方案的数量也在不断发展。搜索过程中会动态调整算法的参数,包括选择方案,总体大小以及为每对父母生成的子解的数量。我们提出了一种新的自适应选择方案,以平衡解决方案空间的探索和开发。在著名的Solomon和Gehring和Homberger的基准测试集中进行的广泛实验研究证实了拟议的AMA-VRPTW的功效和收敛能力。我们证明,与其他最新技术相比,它具有很高的竞争力。最后,在全面的敏感性分析中,研究了所提出的自适应方案对AMA-VRPTW行为和性能的影响。该分析辅以两尾Wilcoxon检验,以验证结果的统计显着性。

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