DocumentCode
3605250
Title
Robust Integral of Neural Network and Error Sign Control of MIMO Nonlinear Systems
Author
Qinmin Yang ; Jagannathan, Sarangapani ; Youxian Sun
Author_Institution
State Key Lab. of Ind. Control Technol., Zhejiang Univ., Hangzhou, China
Volume
26
Issue
12
fYear
2015
Firstpage
3278
Lastpage
3286
Abstract
This paper presents a novel state-feedback control scheme for the tracking control of a class of multi-input multioutput continuous-time nonlinear systems with unknown dynamics and bounded disturbances. First, the control law consisting of the robust integral of a neural network (NN) output plus sign of the tracking error feedback multiplied with an adaptive gain is introduced. The NN in the control law learns the system dynamics in an online manner, while the NN residual reconstruction errors and the bounded disturbances are overcome by the error sign signal. Since both of the NN output and the error sign signal are included in the integral, the continuity of the control input is ensured. The controller structure and the NN weight update law are novel in contrast with the previous effort, and the semiglobal asymptotic tracking performance is still guaranteed by using the Lyapunov analysis. In addition, the NN weights and all other signals are proved to be bounded simultaneously. The proposed approach also relaxes the need for the upper bounds of certain terms, which are usually required in the previous designs. Finally, the theoretical results are substantiated with simulations.
Keywords
Lyapunov methods; MIMO systems; adaptive control; continuous time systems; neurocontrollers; nonlinear control systems; robust control; state feedback; Lyapunov analysis; MIMO nonlinear systems; NN residual reconstruction errors; adaptive gain; bounded disturbances; control law; controller structure; error sign control; multiinput multioutput continuous-time nonlinear systems; neural network; robust integral; semiglobal asymptotic tracking performance; state-feedback control scheme; system dynamics; tracking control; tracking error feedback; unknown dynamics; Approximation methods; Artificial neural networks; Asymptotic stability; Nonlinear systems; Robustness; Stability analysis; Asymptotic stability; Lyapunov method; neural networks (NNs); nonlinear unknown systems; nonlinear unknown systems.;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2015.2470175
Filename
7234927
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