Neural Network Control of a Class of Nonlinear Systems With Actuator Saturation 论文

2006IEEE Transactions on Neural Networks引用 252
Adaptive Control of Nonlinear SystemsNeural Networks and ApplicationsFault Detection and Control Systems

摘要

A neural net (NN)-based actuator saturation compensation scheme for the nonlinear systems in Brunovsky canonical form is presented. The scheme that leads to stability, command following, and disturbance rejection is rigorously proved and verified using a general "pendulum type" and a robot manipulator dynamical systems. Online weights tuning law, the overall closed-loop system performance, and the boundedness of the NN weights are derived and guaranteed based on Lyapunov approach. The actuator saturation is assumed to be unknown and the saturation compensator is inserted into a feedforward path. Simulation results indicate that the proposed scheme can effectively compensate for the saturation nonlinearity in the presence of system uncertainty.