VEHICLE ROUTING IN THE CASE OF UNCERTAIN CUSTOMER DEMANDS AND SOFT TIME WINDOWS: A NEURO-FUZZY LOGIC APPROACH

Dragan Radovanovic
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引用次数: 0

Abstract

Vehicle routing, with its many variants, is one of the most important and frequently solved problems in transportation engineering. The aim of this paper is to develop a decision-making support tool for addressing the issue of dispatching vehicles in scenarios characterized by uncertain demands within soft time windows. In real-world scenarios, it is not uncommon for customer demands to exhibit flexibility, where certain early arrivals or delays may be deemed acceptable. Therefore, this paper introduces vehicle routing in more realistic contexts, offering potential practical implementations. The methodology for solving the problem is based on a fuzzy logic system whose membership functions are additionally adjusted using a neural network. Such a tool, neuro-fuzzy logic, is suitable for solving a defined routing problem since it can consider all the mentioned uncertainties in the distribution systems. Each user is assigned a performance index that considers travel time, demand, and delivery time windows. Then, the performance index is used as input data in the proposed vehicle routing tool based on the Clarke-Wright algorithm. The described approach has been tested on a concrete example, mimicking a distribution network resembling real-world conditions, incorporating estimated travel times between customers. The results demonstrate that the proposed approach can effectively handle customer demands, with an average delay of 5.05 minutes during the 80-minute distribution. In future research, some environmental factors could be included in the proposed model. In addition, one of the directions of future research could be vehicle re-routing using the ideas from this paper.
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不确定客户需求和软时间窗口情况下的车辆路由选择:神经模糊逻辑方法
车辆调度及其多种变体是运输工程中最重要和最常解决的问题之一。本文旨在开发一种决策支持工具,用于解决在软时间窗口内以不确定需求为特征的场景中调度车辆的问题。在现实世界中,客户需求表现出灵活性的情况并不少见,在这种情况下,某些提前到达或延误可能被认为是可以接受的。因此,本文介绍了在更现实的情况下的车辆路由选择,并提供了潜在的实际实施方案。解决问题的方法基于模糊逻辑系统,该系统的成员函数通过神经网络进行额外调整。神经模糊逻辑这种工具适用于解决确定的路由问题,因为它能考虑到配电系统中提到的所有不确定性。每个用户都被分配了一个性能指标,该指标考虑了旅行时间、需求和交付时间窗口。然后,性能指标被用作基于 Clarke-Wright 算法的拟议车辆路由工具的输入数据。所述方法已在一个具体实例中进行了测试,该实例模仿了与现实世界条件相似的配送网络,并纳入了客户之间的估计旅行时间。结果表明,所提出的方法能有效处理客户需求,在 80 分钟的配送过程中,平均延迟时间为 5.05 分钟。在未来的研究中,可以将一些环境因素纳入所提出的模型中。此外,未来研究的方向之一还可以是利用本文的观点重新安排车辆路线。
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
Journal of Applied Engineering Science
Journal of Applied Engineering Science Engineering-Engineering (all)
CiteScore
2.00
自引率
0.00%
发文量
122
审稿时长
12 weeks
期刊介绍: Since 2002 iipp build cooperation with its clients established on wealthy experience, interchangeable respect and trust and permanently arrangement with the purpose of successfully realization of projects recognizable according to good organization and high quality of provided favors. Working as unique team of highly motivated experts, Institute iipp provides to its customers the most high-quality solutions in domain of engineering consulting.
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