非线性不确定系统的单隐层神经网络反馈线性化控制

Mohammed Belkhiri, Hamou Ait Abbas, B. Zegnini
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引用次数: 4

摘要

我们开发了一种自适应输出反馈控制方法,用于高度不确定的非线性系统,在存在非结构化不确定性的情况下,如未建模的动力学,以及被调节系统的未知维度。给定一个光滑的参考轨迹,目标是设计一个控制器,迫使系统测量以有界误差跟踪它。引入线性无参数神经网络作为自适应信号。提出了一种简单的线性观测器来产生自适应律的误差信号。根据李雅普诺夫稳定性分析导出网络权值自适应规则,保证自适应权值误差和跟踪误差有界。通过设计一个四阶二阶非线性系统的控制器和一个全相对度的隧道二极管电路实例说明了理论结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feedback linearization control of nonlinear uncertain systems using single hidden layer neural networks
We develop an adaptive output feedback control methodology for highly uncertain nonlinear systems, in the presence of unstructured uncertainties, such as unmodelled dynamics, and unknown dimension of the regulated system. Given a smooth reference trajectory, the objective is to design a controller that forces the system measurement to track it with bounded errors. A linear in parameters neural network is introduced as an adaptive signal. A simple linear observer is proposed to generate an error signal for the adaptive laws. The network weight adaptation rule is derived from Lyapunov stability analysis, and guarantees that the adapted weight errors and the tracking error are bounded. The theoretical results are illustrated in the design of a controller for a fourth-order nonlinear system of relative degree two, and a tunnel diode circuit example having full relative degree.
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