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Speed Regulation of Overhead Catenary System Inspection Robot for High-Speed Railway through Reinforcement Learning

机译:通过强化学习对高速铁路架空接触网检查机器人的速度调节

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High-speed railway has developed rapidly in recent years. The overhead catenary system (OCS) that transmits electrical energy to the train has to be regularly inspected due to catenary-related defects might directly threaten the safe operation of high-speed railway. In this paper, we present a novel method for autonomous speed regulation of OCS inspection robot using reinforcement learning. To train the robot, we first build a simulation platform based on Unity3D for accurate reconstruction of the railway environment including the OCS, the rail track and the inspection robot. Next, we utilize the range data recorded by the LiDAR mounted on the robot to detect OCS components. Then we leverage the detection results to train the robot to learn speed regulation for shortening the inspection time through reinforcement learning. Experimental results show the validity of the proposed method, which can greatly improve inspection efficiency. Our work has immediate practical significance for high-speed railway automation and informatization.
机译:近年来,高速铁路发展迅速。由于与悬链线有关的缺陷可能直接威胁到高速铁路的安全运行,因此必须定期检查将电能传输到火车的高架悬链线系统(OCS)。在本文中,我们提出了一种使用强化学习的OCS检查机器人自主速度调节的新方法。为了训练机器人,我们首先构建基于Unity3D的仿真平台,以精确重建包括OCS,铁轨和检查机器人在内的铁路环境。接下来,我们利用安装在机器人上的LiDAR记录的距离数据检测OCS组件。然后,我们利用检测结果来训练机器人学习速度调节,从而通过强化学习来缩短检查时间。实验结果证明了该方法的有效性,可以大大提高检测效率。我们的工作对于高速铁路自动化和信息化具有直接的现实意义。

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