Stabilizing unstable equilibria using observer-based neural networks with applications in chaos suppression

P. Yadmellat, S. Nikravesh
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引用次数: 2

Abstract

In this paper, the observer-based stabilization of unstable equilibrium points of a class of unknown nonlinear systems is proposed. The controller is based on feedback linearization where the observer system and control signal are directly estimated by a nonlinear in parameter neural network (NLPNN). A modified Back Propagation (BP) algorithm with e-modification was used to update the weights of the network. Globally uniformly ultimately boundedness of overall closed-loop system is ensured using Lyapunov's direct method. To verify the effectiveness of the proposed observer-based controller, a set of simulations was performed on a Rossler and Lorenz chaotic systems.
基于观测器的神经网络稳定不稳定平衡点及其在混沌抑制中的应用
本文研究了一类未知非线性系统不稳定平衡点的观测器镇定问题。该控制器基于反馈线性化,其中观测器系统和控制信号由非线性无参数神经网络(NLPNN)直接估计。采用改进的BP (Back Propagation)算法进行e-modification,更新网络权值。利用Lyapunov直接方法保证了整体闭环系统的全局一致最终有界性。为了验证所提出的基于观测器的控制器的有效性,对Rossler和Lorenz混沌系统进行了一组仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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