DocumentCode :
619659
Title :
Identification and learning control of strict-feedback systems using adaptive neural dynamic surface control
Author :
Min Wang ; Cong Wang
Author_Institution :
Coll. of Autom. Sci. & Eng., South China Univ. of Technol., Guangzhou, China
fYear :
2013
fDate :
25-27 May 2013
Firstpage :
25
Lastpage :
30
Abstract :
This paper focuses on identification and learning from adaptive neural dynamic surface control (DSC) for a class of nth-order strict-feedback systems. In the previous neural learning control proposed using backstepping, intermediate variables are often used as neural network (NN) inputs to keep the dimension of NN inputs minimal. However, the number and complexity of intermediate variables increase as the increasing order of the system. This makes it difficult to achieve learning for the high-order strict-feedback systems due to “the explosion of complexity”. To overcome the difficulty, a stable adaptive neural DSC is proposed with auxiliary first-order filters. Due to the use of DSC, the derivative of the filter output variable is used as the NN input instead of the previous intermediate variables. This reduces greatly the dimension of NN inputs, especially for high-order systems. After the stable DSC design, we decompose the stable closed-loop system into a series of linear time-varying (LTV) perturbed subsystems. Using a recursive design, the recurrent property of the NN input variables is easily proven since the complexity is overcome using DSC. Subsequently, the partial persistent excitation (PE) condition of the radial basis function (RBF) NN is satisfied. By combining a state transformation, accurate approximations of the closed-loop system dynamics are recursively achieved in a local region along recurrent orbits. Consequently, a neural learning control method with the learned knowledge is proposed to achieve the closed-loop stability and the better control performance with the faster tracking convergence rate and the smaller tracking error. Simulation studies are performed to demonstrate the effectiveness of the proposed scheme.
Keywords :
adaptive control; approximation theory; closed loop systems; feedback; identification; neurocontrollers; radial basis function networks; stability; time-varying systems; DSC; LTV perturbed subsystems; NN inputs; adaptive neural dynamic surface control; approximations; auxiliary first-order filters; closed-loop stability; closed-loop system dynamics; high-order strict-feedback systems; identification; linear time-varying perturbed subsystems; neural learning control method; neural network inputs; nth-order strict-feedback systems; partial persistent excitation condition; radial basis function NN; stable adaptive neural DSC; stable closed-loop system; Adaptive systems; Approximation methods; Artificial neural networks; Closed loop systems; Complexity theory; Orbits; Radial basis function networks; Deterministic learning; Dynamic surface control; Persistent excitation; Strict-feedback systems;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control and Decision Conference (CCDC), 2013 25th Chinese
Conference_Location :
Guiyang
Print_ISBN :
978-1-4673-5533-9
Type :
conf
DOI :
10.1109/CCDC.2013.6560888
Filename :
6560888
Link To Document :
بازگشت