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Avoiding Controller Singularities in Adaptive Recurrent Neural Control

Authors:Felix Ramon, FIME Universidad de Colima, Mexico
Sanchez Edgar N., CINVESTAV Guadalajara, Mexico
Loukianov Alexander G., CINVESTAV Guadalajara, Mexico
Topic:3.2 Cognition and Control ( AI, Fuzzy, Neuro, Evolut.Comp.)
Session:Adaptive Neuro-fuzzy Control
Keywords: Induction Motors, Sliding Modes, Neural Control, Block Control

Abstract

In this paper, to overcome the controller singularity problems, a novel neural parameters adaptive law for on-line identification is proposed, such strategy avoid specific adaptive weights zero-crossing. Using a priori knowledge about the real plant, a recurrent neural network is proposed as identifier. Based on the neural identifier model, a discontinuous control law is derived, which combines Block Control and Sliding Modes. The proposed scheme is tested in a induction motor via simulations.