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Velocity Regulation for Automatic Train Operation via Meta-Reinforcement Learning

机译:通过元强化学习实现列车自动运行的速度调节

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In this paper, we consider the velocity regulation for automatic train operation to maintain the velocity of the train at a desired value. Due to complicated railway conditions and uncertain dynamics of the system, the problem cannot be well solved by most of the model-based controllers. To this purpose, we formulate the velocity regulation problem as a sequence of stationary Markov decision processes (MDP) with unknown transition probabilities. Based on the meta-learning framework, we propose a model-free algorithm to learn an adaptive controller, which only requires a "small" amount of sampled data from the corresponding MDP. We illustrate with simulations that our model-free controller performs well and can well adapt to the dynamical environments.
机译:在本文中,我们考虑了自动火车运行的速度调节,以将火车的速度保持在期望值。由于复杂的铁路条件和不确定的系统动力学,大多数基于模型的控制器无法很好地解决该问题。为此,我们将速度调节问题公式化为一系列具有未知转移概率的平稳马尔可夫决策过程(MDP)。基于元学习框架,我们提出了一种无需模型的算法来学习自适应控制器,该控制器仅需要来自相应MDP的少量采样数据即可。我们通过仿真说明我们的无模型控制器性能良好,并且可以很好地适应动态环境。

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