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An intelligent train control approach based on the monte carlo reinforcement learning algorithm

机译:基于蒙特卡洛强化学习算法的智能列车控制方法

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Traditional research on the train control problem use the determined train model and the control method cannot deal with the variable parameters in the complex environment. This paper proposes a new train control approach by analyzing the operation data and the reinforcement learning method instead of using a detailed train model. Specifically, a similarity-based sampling method is introduced to sample segments of train operation data, which is used to predict the running state of the train. With the operation data, the reward of each segment for the train operation can be evaluated. Then, the monte carlo reinforcement learning method is applied to select the optimal solution for the train control decision. Finally, a case study is conducted to illustrate the effectiveness of the proposed approach based on the practical operation data of Yizhuang line.
机译:关于列车控制问题的传统研究使用确定的列车模型,并且控制方法无法处理复杂环境中的可变参数。本文通过分析运行数据和强化学习方法,而不是使用详细的火车模型,提出了一种新的火车控制方法。具体而言,将基于相似度的采样方法引入到列车运行数据的采样段中,该方法用于预测列车的运行状态。利用操作数据,可以评估列车操作的每个分段的奖励。然后,应用蒙特卡洛强化学习方法为列车控制决策选择最优解。最后,以伊庄线的实际运行数据为例,通过实例研究了该方法的有效性。

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