Artículos de revistas
Adaptive neural sliding mode compensator for a class of nonlinear systems with unmodeled uncertainties
Fecha
2013-09Registro en:
Rossomando, Francisco Guido; Soria, Carlos Miguel; Carelli Albarracin, Ricardo Oscar; Adaptive neural sliding mode compensator for a class of nonlinear systems with unmodeled uncertainties; Elsevier; Engineering Applications Of Artificial Intelligence; 26; 10; 9-2013; 2251-2259
0952-1976
CONICET Digital
CONICET
Autor
Rossomando, Francisco Guido
Soria, Carlos Miguel
Carelli Albarracin, Ricardo Oscar
Resumen
This paper addresses the problem of adaptive neural sliding mode control for a class of multi-input multi-output nonlinear system. The control strategy is an inverse nonlinear controller combined with an adaptive neural network with sliding mode control using an on-line learning algorithm. The adaptive neural network with sliding mode control acts as a compensator for a conventional inverse controller in order to improve the control performance when the system is affected by variations in its entire structure (kinematics and dynamics). The controllers are obtained by using Lyapunov's stability theory. Experimental results of a case study show that the proposed method is effective in controlling dynamic systems with unexpected large uncertainties.