利用遗传算法进行高效公交网络设计、频率调整和车队计算

Q2 Computer Science
Miguel Jiménez-Carrión, Gustavo A. Flores-Fernandez, Alejandro B. Jiménez-Panta
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引用次数: 0

摘要

本研究的主要目标是分两个阶段实现一个计算原型:第一阶段主要侧重于基于进化算法生成高效路线。换句话说,在第一阶段解决了复杂的计算问题。然后,第二阶段将重点转向使用分配算法确定机队规模和频率。该方法旨在解决公共交通网络中复杂的组合搜索问题。在第一阶段,原型利用被称为遗传算法(GA)的元启发式。在遗传算子中,采用了一种称为“聚合交叉”的创新方法,并使用了一个额外的突变过程来保持可行的后代。在第二阶段,考虑第一阶段产生的路由,使用分配算法。结果表明,在第一阶段,GA元启发式算法在每次运行中始终如一地提供高效的路径,证实了在该初始阶段有效地解决了问题的组合复杂性。这些结果在Mandl的瑞士道路网络上得到了验证,与之前的研究相比,显示出更好的解决方案。值得注意的是,此流程的执行时间仅为35分钟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Transit Network Design, Frequency Adjustment, and Fleet Calculation Using Genetic Algorithms
The main objective of this study was to implement a computational prototype in two stages: the first stage primarily focused on generating efficient routes based on an evolutionary algorithm. In other words, the complex computational problem was solved in the first stage. The second stage then shifted its focus towards determining the fleet size and frequencies using an allocation algorithm. This approach was designed to address the complex combinatorial search problem within a public transportation network. In the first stage, the prototype utilizes the metaheuristic known as Genetic Algorithms (GA). Within the GA operators, an innovative method called "aggregated crossover" is employed, with an additional mutation procedure that maintains feasible descendants. In the second stage, an allocation algorithm is used, taking into account the routes generated in the first stage. The results demonstrate that in the first stage, the GA metaheuristic consistently delivers highly efficient routes in each run, confirming that the combinatorial complexity of the problem is effectively resolved in this initial phase. These results were validated on Mandl's Swiss Road network, showing superior solutions compared to those presented in previous studies. Notably, the execution time for this process is only 35 minutes.
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来源期刊
Journal of Internet Services and Information Security
Journal of Internet Services and Information Security Computer Science-Computer Science (miscellaneous)
CiteScore
3.90
自引率
0.00%
发文量
0
审稿时长
8 weeks
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