Design of a hybridization between Tabu search and PAES algorithms to solve a multi-depot, multi-product green vehicle routing problem

IF 1.4 Q3 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Decision Science Letters Pub Date : 2023-01-01 DOI:10.5267/j.dsl.2022.11.004
Juan Sebastián Azuero-Ortiz, María Alejandr Gaviria-Hernández, Vicky Magnolia Jiménez-Rodríguez, Edgar José Vale-Santiago, Eliana María González-Neira
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引用次数: 1

Abstract

Vehicle routing problem (VRP) is a classic problem studied in logistic. One of the most important variations within this problem is called Green Vehicle Routing Problem (GVRP), in which environmental aspects are considered when designing product delivery routes. This variant arises due to the high levels of pollution produced by transport vehicles, so it is a variation whose study represents a vital impact nowadays. This project will consider a GVRP and will be developed considering the characteristics of multi-depot (MDVRP) and multi-product (MPVRP) to minimize the costs of assignation of vehicles and CO2 emissions. To solve the problem, this project proposes a hybridization between the classic tabu search (TS) metaheuristic and the PAES algorithm (TS+PAES) to generate the Pareto frontier of both objectives. An integer mixed linear programming model is formulated and developed for each objective function separately to have an optimal point of comparison for the efficiency of the proposed algorithm. Also, the TS+PAES algorithm is compared to the nearest neighbor algorithm for large instances. Two computational experiments were carried out, one for small and the other one for large instances. The experiment for small instances showed that the GAP of each extreme of the frontier compared to the MILP model is on average 0.73%. For large instances, the metaheuristic improves in 0.1% the results presented by the MILP model showing that the metaheuristic provides closer near-optimal solutions in less computational time. Besides, the metaheuristic, in comparison with the nearest neighborhood heuristic, improves in 44.21% the results of emissions and in 3.88% the costs. All these results demonstrate the effectiveness of the metaheuristic.
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设计了一种混合禁忌搜索和PAES算法来解决多车场、多产品的绿色车辆路径问题
车辆路径问题(VRP)是物流领域研究的经典问题。这个问题中最重要的变化之一被称为绿色车辆路线问题(GVRP),在设计产品交付路线时考虑环境因素。这种变异是由于交通工具产生的高水平污染而产生的,因此对这种变异的研究在当今具有至关重要的影响。该项目将考虑GVRP,并将考虑多仓库(MDVRP)和多产品(MPVRP)的特点,以最大限度地降低车辆分配成本和二氧化碳排放。为了解决这一问题,本项目提出了经典禁忌搜索(TS)元启发式算法与PAES算法(TS+PAES)的杂交,以生成两个目标的帕累托边界。对每个目标函数分别建立了一个整数混合线性规划模型,使所提算法的效率有一个最优的比较点。此外,还将TS+PAES算法与大型实例的最近邻算法进行了比较。进行了两个计算实验,一个是小实例,另一个是大实例。小实例实验表明,与MILP模型相比,边界各极值的GAP平均为0.73%。对于大型实例,元启发式方法比MILP模型提供的结果提高了0.1%,表明元启发式方法在更少的计算时间内提供了更接近最优的解决方案。此外,与最近邻启发式相比,元启发式的排放结果提高了44.21%,成本提高了3.88%。这些结果都证明了元启发式算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Decision Science Letters
Decision Science Letters Decision Sciences-Decision Sciences (all)
CiteScore
3.40
自引率
5.30%
发文量
49
审稿时长
20 weeks
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