Article ID Journal Published Year Pages File Type
1131580 Transportation Research Part B: Methodological 2016 18 Pages PDF
Abstract

•Design of the key components for implementing a reinforcement-learning approach to the task of train rescheduling.•Implementation of a Q-learning algorithm for train rescheduling.•Evaluation of the utility of Q-learning for train rescheduling on a real-world scenario.

Optimal rail network infrastructure and rolling stock utilization can be achieved with use of different scheduling tools by extensive planning a long time before actual operations. The initial train timetable takes into account possible smaller disturbances, which can be compensated within the schedule. Bigger disruptions, such as accidents, rolling stock breakdown, prolonged passenger boarding, and changed speed limit cause delays that require train rescheduling. In this paper, we introduce a train rescheduling method based on reinforcement learning, and more specifically, Q-learning. We present here the Q-learning principles for train rescheduling, which consist of a learning agent and its actions, environment and its states, as well as rewards. The use of the proposed approach is first illustrated on a simple rescheduling problem comprising a single-lane track with three trains. The evaluation of the approach is performed on extensive set of experiments carried out on a real-world railway network in Slovenia. The empirical results show that Q-learning lead to rescheduling solutions that are at least equivalent and often superior to those of several basic rescheduling methods that do not rely on learning agents. The solutions are learned within reasonable computational time, a crucial factor for real-time applications.

Related Topics
Social Sciences and Humanities Decision Sciences Management Science and Operations Research
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