基于NSGA-II算法的需求响应交通车辆路径优化

Renan Santos Mendes, E. Wanner, J. Sarubbi, F. V. Martins
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引用次数: 11

摘要

需求响应式交通(DRT)系统作为解决传统城市交通系统中出现的需求变化甚至不可预测问题的替代方案而出现。这可以在一些实际情况中看到,例如农村地区的公共交通,在某些情况下,没有办法预测需求。本文讨论了需求响应运输(VRPDRT)的车辆路线问题,VRPDRT是一种运输方式,可以像出租车或小巴一样将客户带到目的地,以降低运营成本并满足客户需求。提出了一种采用5种不同目标函数的VRPDRT多目标方法。这些功能汇总为三个新功能,从而形成VRPDRT的三个目标公式。当使用三目标方法时,该公式可以更好地理解公司和人的观点,同时允许以有效的方式解决由此产生的问题。所提出的三目标优化问题使用随机生成解的方法和一种被认为是最先进的算法,非支配排序遗传算法II (NSGA-II)来解决。使用集合覆盖度量来比较解决方案的集合。结果表明,NSGA-II算法对于所使用的所有目标函数都能得到具有较优值的解集,也称为非支配解集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of the vehicle routing problem with demand responsive transport using the NSGA-II algorithm
Demand Responsive Transport (DRT) systems emerge as an alternative to deal with the problem of variable demand, or even unpredictable, occurring in conventional urban transport systems. It can be seen in some practical situations such as public transport in rural areas, wherein in some situations, there is no way to predict demand. This paper addresses the Vehicle Routing Problem with Demand Responsive Transport (VRPDRT), a type of transport which enables customers to be taken to their destination like a taxi or minibus in order to reduce operating costs and to meet customer needs. A multiobjective approach is proposed to VRPDRT in which five different objective functions are used. These functions are aggregated in three new functions resulting in a three-objective formulation for VRPDRT. When using a three objective approach, that formulation allows a better understanding of the company and human perspectives while permitting to solve the resulting problem in an efficient way. The proposed three-objective optimization problem is solved using a random method of generating solutions and an algorithm considered state of the art, the Non-dominated Sorting Genetic Algorithm II (NSGA-II). The sets of solutions are compared using the Set Coverage Metric. The results show that the NSGA-II algorithm could obtain sets of solutions with better values for all objective functions used also called the non-dominated solutions set.
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