求解具有时间窗的多目标车辆路径问题:一种基于分解的多形式优化方法

IF 5.2 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Tsinghua Science and Technology Pub Date : 2023-09-22 DOI:10.26599/TST.2023.9010048
Yiqiao Cai;Zifan Lin;Meiqin Cheng;Peizhong Liu;Ying Zhou
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引用次数: 0

摘要

在求解具有时间窗的多目标车辆路径问题(MOVRPTW)时,现有的大多数算法都集中在单个问题公式的优化上。然而,很少有人致力于利用MOVRPTW的替代公式中的宝贵知识来获得更好的优化性能。针对这一不足,本研究提出了一种基于分解的多目标多形式进化算法(MMFEA/D),该算法同时对MOVRPTW的多个备选公式进行进化搜索,以实现互补。特别地,MMFEA/D的主要特征是三个折叠。首先,采用多形式构造(MFC)策略来构造多个备选公式,每个公式是通过在MOVRPTW分解的基础上对几个相邻的子问题进行分组来构造的。其次,设计了一种转移繁殖(TFR)机制,通过从其他配方中转移有前景的解决方案,为每个配方产生后代,从而可以共享和利用从不同配方中捕获的有用特征来指导进化搜索。第三,开发了一种自适应局部搜索(ALS)策略,根据其对MOVRPTW的有用性,将搜索工作投入到不同的替代公式上,从而促进计算资源的有效分配。实验研究表明,MMFEA/D在经典Solomon实例和真实世界实例上具有优异的性能。
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Solving Multi-Objective Vehicle Routing Problems with Time Windows: A Decomposition-Based Multiform Optimization Approach
In solving multi-objective vehicle routing problems with time windows (MOVRPTW), most existing algorithms focus on the optimization of a single problem formulation. However, little effort has been devoted to exploiting valuable knowledge from the alternate formulations of MOVRPTW for better optimization performance. Aiming at this insufficiency, this study proposes a decomposition-based multi-objective multiform evolutionary algorithm (MMFEA/D), which performs the evolutionary search on multiple alternate formulations of MOVRPTW simultaneously to complement each other. In particular, the main characteristics of MMFEA/D are three folds. First, a multiform construction (MFC) strategy is adopted to construct multiple alternate formulations, each of which is formulated by grouping several adjacent subproblems based on the decomposition of MOVRPTW. Second, a transfer reproduction (TFR) mechanism is designed to generate offspring for each formulation via transferring promising solutions from other formulations, making that the useful traits captured from different formulations can be shared and leveraged to guide the evolutionary search. Third, an adaptive local search (ALS) strategy is developed to invest search effort on different alternate formulations as per their usefulness for MOVRPTW, thus facilitating the efficient allocation of computational resources. Experimental studies have demonstrated the superior performance of MMFEA/D on the classical Solomon instances and the real-world instances.
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CiteScore
12.10
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0.00%
发文量
2340
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