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Hybrid multiobjective evolutionary algorithm with fast sampling strategy-based global search and route sequence difference-based local search for VRPTW

机译:具有快速采样策略的全局搜索和路由序列差异基于差异的本地搜索vrptw的混合多目标进化算法

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The vehicle routing problem with time windows (VRPTW) is an important and widely studied combinatorial optimization problems. This paper aims at VRPTW with the objectives of reducing the number of vehicles and minimizing the time-wasting during the delivery process caused by early arrival. To solve this NP-hard problem, a hybrid multiobjective evolutionary algorithm with fast sampling strategy-based global search and route sequence difference-based local search (HMOEA-GL) is proposed. Firstly, fast sampling strategy-based global search (FSS-GS) of HMOEA-GL extensively explores the entire solution space to quickly guide the search direction towards the center and edge areas of Pareto frontier. Secondly, route sequence difference-based local search (RSD-LS) is executed on the individuals with poor performance in the population obtained by FSS-GS to enhance the search ability of HMOEA-GL. In addition, the suitable coding method and proper genetic operators are designed, especially, a simple insertion search is used to reduce the number of vehicles in VRPTW. Comparing with NSGA-II, SPEA2, and MOEA/D, experimental results on 12 Solomon benchmark test problems indicate that the proposed HMOEA-GL is effective, and more excellent in convergence, while maintaining a satisfying distribution performance. HMOEA-GL could be an effective intelligent algorithm for expert and intelligent decision support system to help logistics companies to make decisions. (C) 2019 Elsevier Ltd. All rights reserved.
机译:时间窗口(VRPTW)的车辆路由问题是一个重要的和广泛研究的组合优化问题。本文旨在凭借减少车辆数量的目标,并最大限度地减少在早期到达造成的交付过程中的时间浪费。为了解决这个NP难题,提出了一种具有快速采样策略的全球搜索和路由序列差异基于差异的本地搜索(HMoEA-GL)的混合多目标进化算法。首先,HMOEA-GL的快速采样策略的全球搜索(FSS-GS)广泛探索整个解决方案空间,以快速将搜索方向朝向帕累托前沿的中心和边缘区域。其次,基于路由序列差异的本地搜索(RSD-LS)在由FSS-GS获得的群体中具有差的个体上执行,以增强HMOEA-GL的搜索能力。此外,特别设计合适的编码方法和适当的遗传操作员,特别是简单的插入搜索用于减少VRPTW中的车辆数量。与NSGA-II,SPEA2和MOEA / D相比,12所罗门基准测试问题的实验结果表明,提出的HMoEA-GL是有效的,更优异的收敛性,同时保持满足的分布性能。 HMOEA-GL可以是专家和智能决策支持系统的有效智能算法,以帮助物流公司做出决策。 (c)2019 Elsevier Ltd.保留所有权利。

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