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Adaptive control of non-linear plants using neural networks-application to a flux control in AC drive system

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2 Author(s)
Kulawski, G.J. ; Birmingham Univ., UK ; Brdys, M.A.

Application of the backpropagation neural networks to a self-tuning adaptive control of unknown, nonlinear and feedback linearizable plants is examined. The control structure analysed in the paper is based on a method recently reported in literature with some suggested modifications, which are verified in the simulation experiments. Neural networks are employed to build a model of unknown, nonlinear system which is used to synthesise a control input. Self-tuning adaptive control algorithm is then applied to a stator flux control of an induction motor with three phase stator windings and short circuited rotor winding.

Published in:
Control, 1994. Control '94. International Conference on  (Volume:2 )

Date of Conference: 21-24 March 1994

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