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Path tracking control and identification of tire parameters using on-line model-based reinforcement learning

机译:基于在线模型的强化学习的路径跟踪控制和轮胎参数识别

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Path tracking control for autonomous vehicle using model predictive control (MPC) algorithm maintains maneuverability by calculating a sequence of control input which minimizes a tracking error. The weakness of this method is that the performance of MPC may decrease significantly when the priori prediction model is not accurate. Therefore, it is important to keep the vehicle stable when MPC having model error. This paper uses an on-line model-based reinforcement learning (RL) to decrease the path error by learning unknown parameters and updating a prediction model. To validate, two kinds of path tracking simulation are conducted: one is the comparison the performance between on-line model-based RL and MPC with model error. The other one is about the test when the model used in MPC and the true dynamics, which actually received input, have different tire model. The model-based RL method succeeds to learn unknown tire parameters and maintains their maneuverability in both simulations.
机译:使用模型预测控制(MPC)算法对自动驾驶车辆进行路径跟踪控制,可以通过计算一系列控制输入来保持可操作性,从而最大程度地减小跟踪误差。该方法的缺点是,当先验预测模型不准确时,MPC的性能可能会大大降低。因此,当MPC出现模型误差时,保持车辆稳定很重要。本文使用基于在线模型的强化学习(RL)通过学习未知参数和更新预测模型来减少路径误差。为了验证这一点,进行了两种路径跟踪仿真:一种是将基于模型的在线RL和MPC的性能与模型误差进行比较。另一个是关于当MPC中使用的模型和实际收到输入的真实动力学具有不同的轮胎模型时的测试。基于模型的RL方法成功学习了未知的轮胎参数,并在两个模拟中均保持了可操纵性。

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