Evaluating metaheuristic solution quality for a hierarchical vehicle routing problem by strong lower bounding

IF 3.7 4区 管理学 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Operations Research Perspectives Pub Date : 2025-06-01 Epub Date: 2025-03-15 DOI:10.1016/j.orp.2025.100332
Marduch Tadaros , Athanasios Migdalas , Nils-Hassan Quttineh , Torbjörn Larsson
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Abstract

We study a vehicle routing problem that originates from a Nordic distribution company and includes the essential decision-making components of the company’s logistics operations. The problem considers customer deliveries from a depot using heavy depot vehicles, swap bodies, optional switch points, and lighter local vehicles; a feature is that deliveries are made by both depot and local vehicles. The problem has earlier been solved by a fast metaheuristic, which does however not give any quality guarantee. To assess the solution quality, two strong formulations of the problem based on the column generation approach are developed. In both of these the computational complexity is mitigated through an enumeration of the switch point options. The formulations are evaluated with respect to the quality of the linear programming lower bounds in relation to the bounds obtained from a compact formulation. The strong lower bounding quality enables a significant reduction of the optimality gap compared to the compact formulation. Further, the bounds verify the high quality of the metaheuristic solutions, and for several problem instances the optimality gap is even closed.
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用强下边界评价分层车辆路径问题的元启发式解质量
我们研究了一个来自北欧分销公司的车辆路线问题,包括该公司物流业务的基本决策组成部分。该问题考虑客户使用重型仓库车辆、交换体、可选开关点和较轻的本地车辆从仓库交付;它的一个特点是由仓库车辆和当地车辆共同配送。之前已经有一种快速的元启发式方法解决了这个问题,但是这种方法不能保证质量。为了评估解决方案的质量,基于柱生成方法的问题的两个强公式被开发。在这两种方法中,通过枚举切换点选项来减轻计算复杂性。根据线性规划下界相对于由紧化公式得到的下界的质量,对这些公式进行了评价。与紧凑的公式相比,强大的下限质量可以显著减少最优性差距。此外,边界验证了元启发式解的高质量,并且对于一些问题实例的最优性差距甚至是封闭的。
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来源期刊
Operations Research Perspectives
Operations Research Perspectives Mathematics-Statistics and Probability
CiteScore
6.40
自引率
0.00%
发文量
36
审稿时长
27 days
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