info:eu-repo/semantics/article
Self-tuning of a Neuro-Adaptive PID Controller for a SCARA Robot Based on Neural Network
Fecha
2018-05Registro en:
Oliveira Freire, Eduardo; Rossomando, Francisco Guido; Soria, Carlos Miguel; Self-tuning of a Neuro-Adaptive PID Controller for a SCARA Robot Based on Neural Network; Institute of Electrical and Electronics Engineers; IEEE Latin America Transactions; 16; 5; 5-2018; 1364-1374
1548-0992
CONICET Digital
CONICET
Autor
Oliveira Freire, Eduardo
Rossomando, Francisco Guido
Soria, Carlos Miguel
Resumen
In this paper a MIMO (Multiple-Input-Multiple-Output) adaptive neural PID (AN-PID) controller that can be applied to a nonlinear dynamics is proposed, and its use is shown in the control of a SCARA robot for two degrees of freedom. The AN-PID controller, including a neural network of the dynamic perceptron type, is designed. The proposed controller uses a RBF network to identify the model and back propagates the control error to the AN-PID controller, unlike other controllers, that use direct methods to back propagate such error. With these properties, an AN-PID controller corrects the tracking errors due to the uncertainties and variations in the robot arm dynamics. It is robust and with adaptive capacity in order to achieve a suitable control performance. Experimental results on the SCARA robot were obtained to illustrate the effectiveness of the proposed control strategy, including comparison with a classical PID. By using Lyapunovs discrete-time theory, it was demonstrated that the control error is semi-global uniformly ultimate bounded (SGUUB).