Hsu Chun-Fei, Lin Chih-Min, Lee Tsu-Tian
Department of Electrical and Control Engineering, National Chiao-Tung University, Hsinchu 300, Taiwan, ROC.
IEEE Trans Neural Netw. 2006 Sep;17(5):1175-83. doi: 10.1109/TNN.2006.878122.
This paper proposes a wavelet adaptive backstepping control (WABC) system for a class of second-order nonlinear systems. The WABC comprises a neural backstepping controller and a robust controller. The neural backstepping controller containing a wavelet neural network (WNN) identifier is the principal controller, and the robust controller is designed to achieve L2 tracking performance with desired attenuation level. Since the WNN uses wavelet functions, its learning capability is superior to the conventional neural network for system identification. Moreover, the adaptation laws of the control system are derived in the sense of Lyapunov function and Barbalat's lemma, thus the system can be guaranteed to be asymptotically stable. The proposed WABC is applied to two nonlinear systems, a chaotic system and a wing-rock motion system to illustrate its effectiveness. Simulation results verify that the proposed WABC can achieve favorable tracking performance by incorporating of WNN identification, adaptive backstepping control, and L2 robust control techniques.
本文针对一类二阶非线性系统提出了一种小波自适应反步控制(WABC)系统。该WABC由神经反步控制器和鲁棒控制器组成。包含小波神经网络(WNN)辨识器的神经反步控制器为主控制器,鲁棒控制器旨在实现具有期望衰减水平的L2跟踪性能。由于WNN使用小波函数,其学习能力在系统辨识方面优于传统神经网络。此外,控制系统的自适应律是在李雅普诺夫函数和巴尔巴拉特引理的意义下推导出来的,因此可以保证系统渐近稳定。将所提出的WABC应用于两个非线性系统,即一个混沌系统和一个机翼摇滚运动系统,以说明其有效性。仿真结果验证了所提出的WABC通过结合WNN辨识、自适应反步控制和L2鲁棒控制技术能够实现良好的跟踪性能。