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Sequential Insertion Heuristic with Adaptive Bee Colony Optimisation Algorithm for Vehicle Routing Problem with Time Windows

机译:带时间窗车辆路径问题的自适应蜜蜂群体优化算法的顺序插入启发式

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摘要

This paper presents a bee colony optimisation (BCO) algorithm to tackle the vehicle routing problem with time window (VRPTW). The VRPTW involves recovering an ideal set of routes for a fleet of vehicles serving a defined number of customers. The BCO algorithm is a population-based algorithm that mimics the social communication patterns of honeybees in solving problems. The performance of the BCO algorithm is dependent on its parameters, so the online (self-adaptive) parameter tuning strategy is used to improve its effectiveness and robustness. Compared with the basic BCO, the adaptive BCO performs better. Diversification is crucial to the performance of the population-based algorithm, but the initial population in the BCO algorithm is generated using a greedy heuristic, which has insufficient diversification. Therefore the ways in which the sequential insertion heuristic (SIH) for the initial population drives the population toward improved solutions are examined. Experimental comparisons indicate that the proposed adaptive BCO-SIH algorithm works well across all instances and is able to obtain 11 best results in comparison with the best-known results in the literature when tested on Solomon’s 56 VRPTW 100 customer instances. Also, a statistical test shows that there is a significant difference between the results.
机译:本文提出了一种蜂群优化算法(BCO)来解决带时间窗的车辆路径问题(VRPTW)。 VRPTW涉及为服务于一定数量客户的一组车队恢复理想的路线。 BCO算法是一种基于人口的算法,它模仿蜜蜂解决问题的社会沟通模式。 BCO算法的性能取决于其参数,因此使用在线(自适应)参数调整策略来提高其有效性和鲁棒性。与基本BCO相比,自适应BCO的性能更好。多样化对于基于种群的算法的性能至关重要,但是BCO算法中的初始种群是使用贪婪启发式算法生成的,该算法的多样性不足。因此,研究了针对初始种群的顺序插入试探法(SIH)推动种群朝着更好的解决方案发展的方式。实验比较表明,所提出的自适应BCO-SIH算法在所有实例上均能很好地工作,并且与在Solomon的56个VRPTW 100客户实例上进行测试的文献中最知名的结果相比,能够获得11个最佳结果。此外,统计测试表明结果之间存在显着差异。

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  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(10),7
  • 年度 -1
  • 页码 e0130224
  • 总页数 23
  • 原文格式 PDF
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