A Policy-Based Reinforcement Learning Approach for High-Speed Railway Timetable Rescheduling
Yin Wang; Yisheng Lv; Jianying Zhou; Zhiming Yuan; Qi Zhang; Min Zhou
2021
会议日期19-22 Sept. 2021
会议地点Indianapolis, IN, USA
英文摘要

In the daily management of high-speed railway systems, the train timetable rescheduling problem with unpredictable disturbances is a challenging task. The large number of stations and trains leads to a long-time consumption to solve the rescheduling problem, making it difficult to meet the realtime requirements in real-world railway networks. This paper proposes a policy-based reinforcement learning approach to address the high-speed railway timetable rescheduling problem, in which the agent minimizes the total delay by adjusting the departure sequence of all trains along the railway line. A two-stage Markov Decision Process model is established to model the environment where states, actions, and reward functions are designed. The proposed method contains an offline learning process and an online application process, which can give the optimal rescheduling schedule based on the current state immediately. Numerical experiments are performed over two different delay scenarios on the Beijing-Shanghai high-speed railway line. The simulation results show that our approach can find a high-quality rescheduling strategy within one second, which is superior to the First-Come-First-Served (FCFS) and First-Scheduled-First-Served (FSFS) methods.

语种英语
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/47493]  
专题自动化研究所_复杂系统管理与控制国家重点实验室_先进控制与自动化团队
作者单位Institute of Automation, Chinese Academy of Sciences
推荐引用方式
GB/T 7714
Yin Wang,Yisheng Lv,Jianying Zhou,et al. A Policy-Based Reinforcement Learning Approach for High-Speed Railway Timetable Rescheduling[C]. 见:. Indianapolis, IN, USA. 19-22 Sept. 2021.
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