Title :
Adaptive Neural Tracking Control for a Class of Nonstrict-Feedback Stochastic Nonlinear Systems With Unknown Backlash-Like Hysteresis
Author :
Huanqing Wang ; Bing Chen ; Kefu Liu ; Xiaoping Liu ; Chong Lin
Author_Institution :
Inst. of Complexity Sci., Qingdao Univ., Qingdao, China
Abstract :
This paper considers the problem of adaptive neural control of stochastic nonlinear systems in nonstrict-feedback form with unknown backlash-like hysteresis nonlinearities. To overcome the design difficulty of nonstrict-feedback structure, variable separation technique is used to decompose the unknown functions of all state variables into a sum of smooth functions of each error dynamic. By combining radial basis function neural networks´ universal approximation capability with an adaptive backstepping technique, an adaptive neural control algorithm is proposed. It is shown that the proposed controller guarantees that all the signals in the closed-loop system are four-moment semiglobally uniformly ultimately bounded, and the tracking error eventually converges to a small neighborhood of the origin in the sense of mean quartic value. Simulation results further show the effectiveness of the presented control scheme.
Keywords :
adaptive control; approximation theory; closed loop systems; feedback; neurocontrollers; nonlinear control systems; stochastic systems; adaptive backstepping technique; adaptive neural tracking control; approximation capability; backlash like hysteresis nonlinearities; closed-loop system; error dynamic; mean quartic value; nonstrict feedback stochastic nonlinear systems; nonstrict feedback structure; radial basis function neural networks; smooth functions; stochastic nonlinear systems; unknown backlash like hysteresis; variable separation technique; Adaptive systems; Closed loop systems; Hysteresis; Neural networks; Nonlinear systems; Stochastic processes; Vectors; Adaptive neural control; backlash-like hysteresis; backstepping; nonstrict-feedback structure; stochastic nonlinear systems; stochastic nonlinear systems.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2013.2283879