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Deep Reinforcement Learning with embedded LQR Controllers ?

机译:使用嵌入式LQR控制器的深度加强学习

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Reinforcement learning is a model-free optimal control method that optimizes a control policy through direct interaction with the environment. For reaching tasks that end in regulation, popular discrete-action methods are not well suited due to chattering in the goal state. We compare three different ways to solve this problem through combining reinforcement learning with classical LQR control. In particular, we introduce a method that integrates LQR control into the action set, allowing generalization and avoiding fixing the computed control in the replay memory if it is based on learned dynamics. We also embed LQR control into a continuous-action method. In all cases, we show that adding LQR control can improve performance, although the effect is more profound if it can be used to augment a discrete action set.
机译:强化学习是一种无模型的最佳控制方法,通过与环境的直接交互来优化控制策略。为了达到在规则结束的任务,流行的离散动作方法由于在目标状态中的喋喋不休而不太适合。通过将强化学习与古典LQR控制相结合,我们比较三种不同的方法来解决这个问题。特别是,我们介绍一种将LQR控件集成到动作集中的方法,允许泛化,并避免在重放存储器中修复计算的控制,如果它基于学习的动态。我们还将LQR控制嵌入到连续动作方法中。在所有情况下,我们都表明添加LQR控件可以提高性能,尽管如果它可以用于增强离散动作集,效果更为深刻。

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