基于蚁群优化的铁路枢纽动态调度

Jayne Eaton, Shengxiang Yang
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引用次数: 7

摘要

扰动后的有效重新调度是铁路行业关注的一个重要问题。严重的延误会给火车公司带来巨额罚款,也会让乘客感到不满。这个问题由于它是一个动态的问题而更加恶化;由于受干扰的列车正在等待重新安排,可能会有更多的列车到达。新列车可能与现有列车有不同的优先级,因此重新调度问题是一个随时间变化的动态问题。本研究的目的是应用基于种群的蚁群优化算法来解决这一动态铁路枢纽重新调度问题,使用模拟英国铁路网现实世界枢纽的模拟器。结果是有希望的:该算法表现良好,特别是当动态变化是高幅度和高频率时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic railway junction rescheduling using population based ant colony optimisation
Efficient rescheduling after a perturbation is an important concern of the railway industry. Extreme delays can result in large fines for the train company as well as dissatisfied customers. The problem is exacerbated by the fact that it is a dynamic one; more timetabled trains may be arriving as the perturbed trains are waiting to be rescheduled. The new trains may have different priorities to the existing trains and thus the rescheduling problem is a dynamic one that changes over time. The aim of this research is to apply a population-based ant colony optimisation algorithm to address this dynamic railway junction rescheduling problem using a simulator modelled on a real-world junction in the UK railway network. The results are promising: the algorithm performs well, particularly when the dynamic changes are of a high magnitude and frequency.
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