A genetic algorithm for heterogeneous high-speed railway timetabling with dense traffic: The train-sequence matrix encoding scheme

IF 2.6 Q3 TRANSPORTATION
Zhiyuan Yao, Lei Nie, Zhenhuan He
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引用次数: 3

Abstract

Recently, the continued growth of passenger demand for high-speed railways and expectations for varied types of train services have posed a great need for designing a railway timetable suitable for dense and heterogeneous train traffic, where train overtaking is necessary for proper capacity utilization. This study develops an efficient genetic algorithm that considers train orders in all sections to better depict train overtaking and impose specific operational rules essential in this context. Train-sequence matrix is chosen as the chromosome encoding, based on which the “exchange + regeneration” matrix crossover operator is innovatively designed that considers the heterogeneity among trains and improves the feasibility of the crossover, which previous one-sequence crossover operators cannot realize. An overtaking-oriented local search heuristic is inserted in the algorithm to facilitate the local improvement. To guarantee the feasibility of the final solution, a conflict resolution procedure with conflict impact area identification is introduced. Tests of the algorithm on several small- and medium-sized cases reveal that it can reach relatively good solutions within a short time. Finally, the algorithm is tested on Beijing-Shanghai high-speed railway corridor in China and presents good performance both in efficiency and quality.

密集交通异构高速铁路调度的遗传算法:列车序列矩阵编码方案
近年来,高速铁路客运需求的持续增长和对各类列车服务的期望,对设计适合密集和异构列车交通的铁路时刻表提出了极大的需求,列车超车是合理利用运力的必要条件。本研究开发了一种有效的遗传算法,该算法考虑了所有路段的列车顺序,以更好地描述列车超车,并在此背景下实施特定的操作规则。选择列车-序列矩阵作为染色体编码,在此基础上创新设计了“交换+再生”矩阵交叉算子,考虑了列车间的异质性,提高了以往单序列交叉算子无法实现的交叉可行性。算法中引入了面向超车的局部搜索启发式算法,便于局部改进。为了保证最终解决方案的可行性,引入了一种带有冲突影响区域识别的冲突解决程序。在几个中小型案例上的测试表明,该算法可以在较短的时间内得到较好的解。最后,在中国京沪高铁走廊上对该算法进行了测试,结果表明该算法在效率和质量上都取得了良好的效果。
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
CiteScore
7.10
自引率
8.10%
发文量
41
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