DocumentCode :
104473
Title :
Learning From Adaptive Neural Dynamic Surface Control of Strict-Feedback Systems
Author :
Min Wang ; Cong Wang
Author_Institution :
Center for Control & Optimization, South China Univ. of Technol., Guangzhou, China
Volume :
26
Issue :
6
fYear :
2015
fDate :
Jun-15
Firstpage :
1247
Lastpage :
1259
Abstract :
Learning plays an essential role in autonomous control systems. However, how to achieve learning in the nonstationary environment for nonlinear systems is a challenging problem. In this paper, we present learning method for a class of nth-order strict-feedback systems by adaptive dynamic surface control (DSC) technology, which achieves the human-like ability of learning by doing and doing with learned knowledge. To achieve the learning, this paper first proposes stable adaptive DSC with auxiliary first-order filters, which ensures the boundedness of all the signals in the closed-loop system and the convergence of tracking errors in a finite time. With the help of DSC, the derivative of the filter output variable is used as the neural network (NN) input instead of traditional intermediate variables. As a result, the proposed adaptive DSC method 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 perturbed subsystems. Using a recursive design, the recurrent property of NN input variables is easily verified since the complexity is overcome using DSC. Subsequently, the partial persistent excitation condition of the radial basis function 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. Then, the learning control method using the learned knowledge is proposed to achieve the closed-loop stability and the improved control performance. Simulation studies are performed to demonstrate the proposed scheme can not only reuse the learned knowledge to achieve the better control performance with the faster tracking convergence rate and the smaller tracking error but also greatly alleviate the computational burden because of reducing the number and complexity of NN input variables.
Keywords :
adaptive control; closed loop systems; feedback; learning systems; linear parameter varying systems; neurocontrollers; nonlinear control systems; radial basis function networks; stability; time-varying systems; NN input variable complexity; adaptive neural dynamic surface control; autonomous control systems; auxiliary first-order filters; closed-loop stability; filter output variable; high-order systems; learning control method; linear time-varying perturbed subsystems; nonlinear systems; nonstationary environment; nth-order strict-feedback systems; partial persistent excitation condition; present learning method; radial basis function neural network; recurrent orbits; recursive design; stable adaptive DSC technology; stable closed-loop system; state transformation; tracking convergence rate; tracking error; tracking error convergence; Adaptive systems; Approximation methods; Artificial neural networks; Closed loop systems; Convergence; Nonlinear systems; Orbits; Adaptive neural control (ANC); deterministic learning; dynamic surface control (DSC); persistent excitation; strict-feedback systems;
fLanguage :
English
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2162-237X
Type :
jour
DOI :
10.1109/TNNLS.2014.2335749
Filename :
6861984
Link To Document :
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