基于学习能力的进化搜索求解动态车辆路径问题

L. Zhou, L. Feng, Abhishek Gupta, Y. Ong, K. Liu, C. Chen, E. Sha, B. Yang, B. Yan
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引用次数: 15

摘要

目前,动态车辆路径问题(DVRP)由于其广泛的实际应用受到了广泛的关注。与传统的静态车辆路径问题相比,DVRP中的整个路径信息通常是未知的,并且在路径执行过程中是动态获取的。为了解决DVRP问题,文献中提出了许多启发式和元启发式方法。本文提出了一种新的具有学习能力的进化搜索范式来求解DVRP问题。特别是,我们建议在早期时段捕获优化路径解决方案中的结构化知识,当发生动态时,可以进一步重用这些知识来偏差客户-车辆分配。本文通过对前期研究工作的扩展,对有用知识的学习和动态客户需求的调度进行了详细介绍。此外,为了评估所提出的搜索范式的有效性,还报告了对21个具有不同属性的常用DVRP实例的综合实证研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving dynamic vehicle routing problem via evolutionary search with learning capability
To date, dynamic vehicle routing problem (DVRP) has attracted great research attentions due to its wide range of real world applications. In contrast to traditional static vehicle routing problem, the whole routing information in DVRP is usually unknown and obtained dynamically during the routing execution process. To solve DVRP, many heuristic and metaheuristic methods have been proposed in the literature. In this paper, we present a novel evolutionary search paradigm with learning capability for solving DVRP. In particular, we propose to capture the structured knowledge from optimized routing solution in early time slot, which can be further reused to bias the customer-vehicle assignment when dynamic occurs. By extending our previous research work, the learning of useful knowledge, and the scheduling of dynamic customer requests are detailed here. Further, to evaluate the efficacy of the proposed search paradigm, comprehensive empirical studies on 21 commonly used DVRP instances with diverse properties are also reported.
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