Systematic Literature Review Of Particle Swarm Optimization Implementation For Time-Dependent Vehicle Routing Problem

M. Diah, A. Setyanto, E. T. Luthfi
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引用次数: 1

Abstract

Time-dependent VRP (TDVRP) is one of the three VRP variants that have not been widely explored in research in the field of operational research, while Particle Swarm Optimization (PSO) is an optimization algorithm in the field of operational research that uses many variables in its application. There is much research conducted about TDVRP, but few of them discuss PSO's implementation. This article presented as a literature review which aimed to find a research gap about implementation of PSO to resolve TDVRP cases. The research was conducted in five stages. The first stage, a review protocol defined in the form of research questions and methods to perform the review. The second stage is references searching. The third stage is screening the search result. The fourth stage is extracting data from references based on research questions. The fifth stage is reporting the study literature results. The results obtained from the screening process were 37 eligible reference articles, from 172 search results articles. The results of extraction and analysis of 37 reference articles show that research on TDVRP discusses the duration of travel time between 2 locations. The route optimization parameter is determined from the cost of the trip, including the total distance traveled, the total travel time, the number of routes, and the number used vehicles. The datasets that are used in research consist of 2 types, real-world datasets and simulation datasets. Solomon Benchmark is a simulation dataset that is widely used in the case of TDVRP. Research on PSO in the TDVRP case is dominated by the discussion of modifications to determine random values of PSO variables.
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时变车辆路径问题的粒子群优化方法系统文献综述
时变VRP (Time-dependent VRP, TDVRP)是运筹学研究中尚未广泛探索的三种VRP变体之一,而粒子群优化算法(Particle Swarm Optimization, PSO)是运筹学领域中应用较多变量的一种优化算法。关于TDVRP的研究很多,但很少讨论PSO的实现。本文以文献回顾的方式,探讨运用PSO解决TDVRP个案的研究空白。研究分五个阶段进行。第一阶段,以研究问题和方法的形式确定审查方案,进行审查。第二阶段是引用搜索。第三阶段是筛选搜索结果。第四阶段是根据研究问题从参考文献中提取数据。第五阶段报告研究文献结果。筛选过程中从172篇检索结果文章中获得37篇符合条件的参考文献。对37篇文献的提取和分析结果表明,TDVRP的研究讨论了两个地点之间的旅行时间。路线优化参数由行程成本确定,包括总行程距离、总行程时间、路线数量和使用车辆数量。研究中使用的数据集包括两种类型,真实世界数据集和模拟数据集。Solomon Benchmark是一个广泛应用于TDVRP的模拟数据集。在TDVRP案例中,对PSO的研究主要是讨论如何修改以确定PSO变量的随机值。
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