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Feedback linearisation control of an induction machine augmented by single-hidden layer neural networks
Authors:Hamou Ait Abbas  Mohammed Belkheiri  Boubakeur Zegnini
Affiliation:1. Laboratoire d'étude et de Développement des Matériaux Semi-Conducteurs et Diélectriques, Université Amar Telidji de Laghouat, BP G37 Route de Gharda?a 03000, Laghouat, Algeriaaitabbashamou@gmail.com;3. Laboratoire de Télécommunications, Signaux et Systèmes, Université Amar Telidji de Laghouat, BP G37 Route de Gharda?a 03000, Laghouat, Algeria;4. Laboratoire d'étude et de Développement des Matériaux Semi-Conducteurs et Diélectriques, Université Amar Telidji de Laghouat, BP G37 Route de Gharda?a 03000, Laghouat, Algeria
Abstract:We consider adaptive output feedback control methodology of highly uncertain nonlinear systems with both parametric uncertainties and unmodelled dynamics. The approach is also applicable to systems of unknown, but bounded dimension. However, the relative degree of the regulated output is assumed to be known. This new control strategy is proposed to address the tracking problem of an induction motor based on a modified field-oriented control method. The obtained controller is then augmented by an online neural network that serves as an approximator for the neglected dynamics and modelling errors. The network weight adaptation rule is derived from the Lyapunov stability analysis, that guarantees boundedness of all the error signals of the closed-loop system. Computer simulations of an output feedback controlled induction machine, augmented via single-hidden-layer neural networks, demonstrate the practical potential of the proposed control algorithm.
Keywords:induction machine  field-oriented control  unmodelled dynamics  parametric uncertainty  output feedback control  single-hidden-layer neural networks
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