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Near-optimal online control of uncertain nonlinear continuous-time systems based on concurrent learning

机译:基于并发学习的不确定非线性连续时间系统的近最优在线控制

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This paper presents a novel observer-critic architecture for solving the near-optimal control problem of uncertain nonlinear continuous-time systems. Two neural networks (NNs) are employed in the architecture: an observer NN is constructed to get the knowledge of uncertain system dynamics and a critic NN is utilized to derive the optimal control. The observer NN and the critic NN are tuned simultaneously. By using the recorded and instantaneous data together, the optimal control can be derived without the persistence of excitation condition. Meanwhile, the closed-loop system is guaranteed to be stable in the sense of uniform ultimate boundedness. No initial stabilizing control is required in the developed algorithm. An illustrated example is provided to demonstrate the effectiveness of the present approach.
机译:本文提出了一种新颖的观察者批判体系结构,用于解决不确定的非线性连续时间系统的近似最优控制问题。该体系结构中使用了两个神经网络(NN):构造了观察者NN以获取不确定的系统动力学知识,并使用注释器NN来推导最佳控制。观察者NN和评论者NN同时调谐。通过一起使用记录的数据和瞬时数据,可以在没有激励条件持续存在的情况下获得最佳控制。同时,就统一的最终有界性而言,保证了闭环系统是稳定的。在开发的算法中不需要初始稳定控制。提供了一个示例,以演示本方法的有效性。

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