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Completely model-free approximate optimal tracking control for continuous-time nonlinear systems

机译:连续时间非线性系统的完全无模型的近似最优跟踪控制

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This paper studies the optimal tracking control problem for continuous-time affine nonlinear systems and proposes a completely model-free approximate optimal tracking control design approach. This approach only uses measurement data collected from the trajectories of the system in real time to learn the optimal tacking control. At first, a new tracking policy iteration algorithm is developed based on the integral reinforcement learning technique. Then, the algorithm is implemented based on the actor-critic structure, where the critic neural network and the actor neural network are updated iteratively. Finally, simulation results are provided to show the efficiency of the method.
机译:本文研究了连续时间仿射非线性系统的最优跟踪控制问题,提出了一种完全无模型的近似最优跟踪控制设计方法。该方法仅使用从系统轨迹实时收集的测量数据来学习最佳定位控制。首先,基于整体强化学习技术,开发了一种新的跟踪策略迭代算法。然后,基于演员-批评者结构实现该算法,其中评论者神经网络和演员神经网络被迭代地更新。最后,仿真结果表明了该方法的有效性。

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