DocumentCode
701037
Title
Trajectory tracking improvement using neural networks
Author
Meddah, D.Y. ; Benallegue, A.
Author_Institution
Lab. PARC (boite 164), Univ. P. & M. Curie, Paris, France
fYear
1997
fDate
1-7 July 1997
Firstpage
3578
Lastpage
3583
Abstract
A neural network-based robust adaptive tracking controller is proposed for a class of nonlinear multi-input multi-output systems. The nonlinear system is treated as a partially known system. The known dynamic is used to design a nominal feedback controller based on the well-known feedback linearization method, and a neural network-based adaptive compensator is designed to compensate the effects of the system uncertainties and to improve the tracking performance. By this scheme, both strong robustness with respect to unknown dynamics and asymptotic convergence to zero of the output tracking error are obtained.
Keywords
MIMO systems; adaptive control; convergence; feedback; neurocontrollers; robust control; trajectory control; uncertain systems; asymptotic convergence; feedback llnearlzatlon method; neural network-based adaptive compensator; neural network-based robust adaptive tracking controller; nomlnal feedback controller; nonlinear multiinput multioutput systems; system uncertalntles; trajectοry tracking imprονement; Decision support systems; Europe; Nonlinear systems; adaptive control; neural networks; robot manipulator;
fLanguage
English
Publisher
ieee
Conference_Titel
Control Conference (ECC), 1997 European
Conference_Location
Brussels
Print_ISBN
978-3-9524269-0-6
Type
conf
Filename
7082669
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