Flexible Real-time Railway Crew Rescheduling using Depth-first Search

Jie Yuan , Daniel Jones , Gemma Nicholson
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引用次数: 1

Abstract

Crew rescheduling is one of the most important factors one must consider during the recovery process following the disruption of a railway service. If it is not properly considered when the timetable is adjusted, it can jeopardise the prompt return to stable service. A new method, namely depth-first search crew recovery (DFSCR), is developed and proposed as a satisfactory way of dealing with the real-time crew rescheduling problem. DFSCR takes into account practical considerations of the railway environment and implements flexible, parameterised rescheduling constraints in the model to generate multiple solutions. The method has been tested on real-world scenarios and its capabilities are tested against two pre-existing methods. Sensitivity tests on five parameters (maximum permitted working hours, for example) are conducted and results indicate that small adjustments to the allowed ranges of parameter values can often generate acceptable solutions where there would have been none otherwise. This parameter relaxation is implemented via a feedback mechanism in DFSCR which takes results of a run of the algorithm to inform which parameters should be relaxed and by how much in order to maximise one's chances of finding a solution in the subsequent run of the algorithm.

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基于深度优先搜索的灵活实时铁路班组调度
在铁路服务中断后的恢复过程中,机组人员重新调度是必须考虑的最重要因素之一。如果在调整时刻表时没有适当考虑到这一点,可能会危及迅速恢复稳定的服务。提出了一种新的解决实时机组重调度问题的方法——深度优先搜索机组恢复(DFSCR)。DFSCR考虑了铁路环境的实际考虑,并在模型中实现了灵活的参数化重调度约束,以生成多个解决方案。该方法已在实际场景中进行了测试,并针对两种预先存在的方法测试了其功能。对五个参数(例如,最大允许工作时间)进行了敏感性测试,结果表明,对参数值的允许范围进行微小调整通常可以产生可接受的解决方案,否则就不会产生可接受的解决方案。这种参数松弛是通过DFSCR中的反馈机制实现的,该机制采用算法运行的结果来通知应该放松哪些参数以及放松多少,以便在随后的算法运行中最大化找到解决方案的机会。
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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