Solving vehicle routing problem with time windows using metaheuristic approaches

Zeynep Aydınalp, Dogan Özgen
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引用次数: 2

Abstract

PurposeDrugs are strategic products with essential functions in human health. An optimum design of the pharmaceutical supply chain is critical to avoid economic damage and adverse effects on human health. The vehicle-routing problem, focused on finding the lowest-cost routes with available vehicles and constraints, such as time constraints and road length, is an important aspect of this. In this paper, the vehicle routing problem (VRP) for a pharmaceutical company in Turkey is discussed.Design/methodology/approachA mixed-integer programming (MIP) model based on the vehicle routing problem with time windows (VRPTW) is presented, aiming to minimize the total route cost with certain constraints. As the model provides an optimum solution for small problem sizes with the GUROBI® solver, for large problem sizes, metaheuristic methods that simulate annealing and adaptive large neighborhood search algorithms are proposed. A real dataset was used to analyze the effectiveness of the metaheuristic algorithms. The proposed simulated annealing (SA) and adaptive large neighborhood search (ALNS) were evaluated and compared against GUROBI® and each other through a set of real problem instances.FindingsThe model is solved optimally for a small-sized dataset with exact algorithms; for solving a larger dataset, however, metaheuristic algorithms require significantly lesser time. For the problem addressed in this study, while the metaheuristic algorithms obtained the optimum solution in less than one minute, the solution in the GUROBI® solver was limited to one hour and three hours, and no solution could be obtained in this time interval.Originality/valueThe VRPTW problem presented in this paper is a real-life problem. The vehicle fleet owned by the factory cannot be transported between certain suppliers, which complicates the solution of the problem.
用元启发式方法求解带时间窗的车辆路径问题
药物是战略产品,对人体健康具有重要作用。药品供应链的优化设计对于避免经济损失和对人体健康的不利影响至关重要。车辆路线问题是其中的一个重要方面,其重点是在车辆可用的情况下,在时间限制和道路长度等限制条件下找到成本最低的路线。本文讨论了土耳其一家制药公司的车辆路线问题。提出了一种基于时间窗车辆路径问题的混合整数规划(MIP)模型,以在一定约束条件下最小化总路径成本为目标。由于该模型使用GUROBI®求解器提供了小问题规模的最优解,对于大问题规模,提出了模拟退火的元启发式方法和自适应大邻域搜索算法。使用一个真实数据集来分析元启发式算法的有效性。通过一组实际问题实例,对所提出的模拟退火算法(SA)和自适应大邻域搜索算法(ALNS)进行了评估和比较。使用精确的算法对小数据集的模型进行了最优求解;然而,对于求解更大的数据集,元启发式算法需要的时间要少得多。对于本研究解决的问题,虽然元启发式算法在不到1分钟的时间内获得了最优解,但在GUROBI®求解器中的解被限制在1小时和3小时内,并且在此时间间隔内无法获得解。本文提出的VRPTW问题是一个现实问题。工厂拥有的车队不能在某些供应商之间运输,这使问题的解决变得复杂。
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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