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Neural Networks L2-gain Controller Design for Nonlinear System

机译:非线性系统的神经网络L2增益控制器设计

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This paper proposes a new method that it uses the neural network to construct the solution of the Hamiltion-Jacobi inequality (HJ), and it carries on the optimization of the neural network weight using the genetic algorithm. This method causes the Lyapunov function to satisfy the HJ, avoides solving the HJ parital differential inequality, and overcomes the difficulty which the HJ parital differential inequality analysis. Beside this, it proposes a design method of a nonlinear state feedback L2-gain disturbance rejection controller based on HJ, and introduces general structure of L2-gain disturbance rejection controller in the form of neural network. The simulation demonstrates the design of controller is feasible and the closed-loop system ensures a finite gain between the disturbance and the output.
机译:提出了一种利用神经网络构造Hamiltion-Jacobi不等式(HJ)解的新方法,并利用遗传算法对神经网络权重进行了优化。该方法使李雅普诺夫函数满足HJ,避免了求解HJ偏微分不等式,并克服了HJ偏微分不等式的分析难题。在此基础上,提出了一种基于HJ的非线性状态反馈L2增益干扰抑制控制器的设计方法,并以神经网络的形式介绍了L2增益干扰抑制控制器的一般结构。仿真表明控制器的设计是可行的,并且闭环系统确保了扰动和输出之间的有限增益。

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