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A self-tuning optimal controller for affine nonlinear continuous-time systems with unknown internal dynamics

机译:内部动力学未知的仿射非线性连续时间系统的自调整最优控制器

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This paper presents a novel neural network (NN) - based self-tuning controller for the optimal regulation of affine nonlinear continuous-time systems. Knowledge of the internal system dynamics is not required whereas the control coefficient matrix is considered to be available. The proposed nonlinear optimal regulator tunes itself in order to simultaneously learn the optimal control input, optimal cost function, and the system internal dynamics using a single NN. A novel NN weight tuning algorithm is derived which ensures the internal system dynamics are learned while simultaneously minimizing a predefined cost function. An initial stabilizing controller is not required. Lyapunov methods are used to show that all signals are uniformly ultimately bounded (UUB). In the absence of NN reconstruction errors, the approximated control input is shown to converge to the optimal control asymptotically for the regulator design, and simulation results illustrate the effectiveness of the approach.
机译:本文提出了一种新型的基于神经网络的自校正控制器,用于仿射非线性连续时间系统的最优调节。不需要了解内部系统动力学,而认为控制系数矩阵可用。提出的非线性最优调节器会对其进行调整,以便同时使用单个NN来学习最优控制输入,最优成本函数和系统内部动力学。推导了一种新颖的NN权重调整算法,该算法可确保在学习内部系统动态的同时最小化预定义的成本函数。不需要初始稳定控制器。使用李雅普诺夫(Lyapunov)方法来显示所有信号最终均一地有界(UUB)。在没有NN重建误差的情况下,对于调节器设计,近似控制输入被显示为渐近收敛于最优控制,并且仿真结果说明了该方法的有效性。

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