A specialized genetic algorithm for the fuel consumption heterogeneous fleet vehicle routing problem with bidimensional packing constraints
Luis Miguel Escobar-Falcón, D. Álvarez-Martínez, John Wilmer-Escobar, Mauricio Granada-Echeverri
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引用次数: 8
Abstract
Article history: Received July 14 2020 Received in Revised Format November 24 2020 Accepted November 24 2020 Available online November, 24 2020 The vehicle routing problem combined with loading of goods, considering the reduction of fuel consumption, aims at finding the set of routes that will serve the demands of the customers, arguing that the fuel consumption is directly related to the weight of the load in the paths that compose the routes. This study integrates the Fuel Consumption Heterogeneous Vehicle Routing Problem with Two-Dimensional Loading Constraints (2L-FHFVRP). To reduce fuel consumption taking the associated environmental impact into account is a classical VRP variant that has gained increasing attention in the last decade. The objective of this problem is to design the delivery routes to satisfy the customers’ demands with the lowest possible fuel consumption, which depends on the distances of the paths, the assigned vehicles, the loading/unloading pattern and the load weight. In the vehicle routing problem literature, the approximate algorithms have had great success, especially the evolutionary ones, which appear in previous works with quite a sophisticated structure, obtaining excellent results, but that are difficult to implement and adapt to other variants such as the one proposed here. In this study, we present a specialized genetic algorithm to solve the design of routes, keeping its main characteristic: the easy implementation. By contrast, the loading of goods restriction is validated by means of a GRASP algorithm, which has been widely employed for solving packing problems. With a view of confirming the performance of the proposed methodology, we provide a computational study that uses all the available benchmark instances, allowing to illustrate the savings achieved in fuel consumption. In addition, the methodology suggested can be adapted to the version of solely minimizing the total distance traveled for serving the customers (without the fuel consumption) and it is compared to the best works presented in the literature. The computational results show that the methodology manages to be adequately adapted to this version and it is capable of finding improved solutions for some benchmark instances. As for future work, we propose to adjust the methodology to consider the three-dimensional loading problem so that it adapts to more reallife conditions of the industry. © 2021 by the authors; licensee Growing Science, Canada
基于二维包装约束的油耗异构车队路径问题的专用遗传算法
文章历史:收到2020年7月14日收到2020年11月24日接受2020年11月24日在线发布2020年11月24日2020年11月24日考虑到降低油耗,车辆路线问题与货物装载相结合,旨在找到满足客户需求的路线集,认为燃油消耗与组成路线的路径上的负载重量直接相关。本研究将二维负载约束下的燃油消耗异构车辆路径问题(2L-FHFVRP)整合在一起。考虑到相关的环境影响,降低燃料消耗是一个经典的VRP变体,在过去十年中受到越来越多的关注。该问题的目标是设计配送路线,以满足客户的需求,并尽可能降低燃料消耗,这取决于路径的距离,指定的车辆,装卸模式和负载重量。在车辆路径问题的文献中,近似算法已经取得了很大的成功,尤其是进化算法,它在以前的作品中出现,具有相当复杂的结构,获得了很好的结果,但难以实现和适应其他变体,如本文提出的。在本研究中,我们提出一种专门的遗传算法来解决路线设计问题,并保持其主要特点:易于实现。与此相反,货物装载限制是通过一种被广泛应用于解决包装问题的GRASP算法来验证的。为了确认所提出方法的性能,我们提供了一个使用所有可用基准实例的计算研究,以说明在燃料消耗方面所取得的节省。此外,建议的方法可以适用于仅最小化为客户服务的总距离(不含燃料消耗)的版本,并将其与文献中提出的最佳作品进行比较。计算结果表明,该方法能够很好地适应该版本,并且能够对一些基准实例找到改进的解。对于未来的工作,我们建议调整方法,考虑三维加载问题,使其更适应现实的工业条件。©2021作者;加拿大Growing Science公司
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