Title :
MRAS Speed Observer for High-Performance Linear Induction Motor Drives Based on Linear Neural Networks
Author :
Cirrincione, Maurizio ; Accetta, Angelo ; Pucci, Marcello ; Vitale, Gianpaolo
Author_Institution :
Univ. Technol. de Belfort Montbeliard, Belfort, France
Abstract :
This paper proposes a neural network (NN) model reference adaptive system (MRAS) speed observer suited for linear induction motor (LIM) drives. The voltage and current flux models of the LIM in the stationary reference frame, taking into consideration the end effects, have been first deduced. Then, the induced part equations have been discretized and rearranged so as to be represented by a linear NN (ADALINE). On this basis, the transport layer security EXIN neuron has been used to compute online, in recursive form, the machine linear speed. The proposed NN MRAS observer has been tested experimentally on suitably developed test set-up. Its performance has been further compared to the classic MRAS and the sliding-mode MRAS speed observers developed for the rotating machines.
Keywords :
adaptive control; angular velocity control; induction motor drives; linear motors; neurocontrollers; observers; recursive estimation; sensorless machine control; variable structure systems; ADALINE; EXIN neuron; LIM drives; NN MRAS speed observer; high-performance linear induction motor drives; linear neural networks; machine linear speed; neural network model reference adaptive system speed observer; recursive form; sensorless control; sliding-mode MRAS speed observers; transport layer security; Adaptation models; Adaptive filters; Artificial neural networks; Equations; Inductors; Mathematical model; Observers; Field-oriented control (FOC); linear induction motor (LIM); model reference adaptive systems (MRASs); neural networks (NNs); sensorless control;
Journal_Title :
Power Electronics, IEEE Transactions on
DOI :
10.1109/TPEL.2012.2200506