DocumentCode :
1534119
Title :
A stator-flux-oriented vector-controlled induction motor drive with space-vector PWM and flux-vector synthesis by neural networks
Author :
Pinto, João O P ; Bose, Bimal K. ; Silva, Luiz Eduardo Borges da
Author_Institution :
Dept. of Electr. Eng., Tennessee Univ., Knoxville, TN, USA
Volume :
37
Issue :
5
fYear :
2001
Firstpage :
1308
Lastpage :
1318
Abstract :
A stator-flux-oriented vector-controlled induction motor drive is described where the space-vector pulsewidth modulation (SVM) and stator-flux-vector estimation are implemented by artificial neural networks (ANNs). ANNs, when implemented by dedicated hardware application-specific integrated circuit chips, provide extreme simplification and fast execution for control and feedback signal processing functions in high-performance AC drives. In the proposed project, a feedforward ANN-based SVM, operating at 20 kHz sampling frequency, generates symmetrical pulsewidth modulation (PWM) pulses in both undermodulation and overmodulation regions covering the range from DC (zero frequency) up to square-wave mode at 60 Hz. In addition, a programmable cascaded low-pass filter (PCLPF), that permits DC offset-free stator-flux-vector synthesis at very low frequency using the voltage model, has been implemented by a hybrid neural network which consists of a recurrent neural network (RNN) and a feedforward neural network (FFANN). The RNN-FFANN-based flux estimation is simple, permits faster implementation, and gives superior transient performance when compared with a standard digital-signal-processor-based PCLPF. A 5 HP open-loop volts/Hz-controlled drive incorporating the proposed ANN-based SVM and RNN-FFANN-based flux estimator was initially evaluated in the frequency range of 1.0-58 Hz to validate the performance of SVM and the flux estimator. Next, the complete 5 HP drive with stator-flux-oriented vector control was evaluated extensively using the PWM modulator and flux estimator
Keywords :
PWM invertors; feedforward neural nets; frequency control; induction motor drives; low-pass filters; machine vector control; magnetic flux; neurocontrollers; recurrent neural nets; stators; voltage control; 1 to 58 Hz; 20 kHz; 5 hp; 60 Hz; ANN; DC offset-free stator-flux-vector synthesis; application-specific integrated circuit chips; artificial neural networks; digital-signal-processor; feedback signal processing functions; feedforward ANN-based SVM; feedforward neural network; flux estimator; flux-vector synthesis; frequency control; hybrid neural network; neural networks; overmodulation region; programmable cascaded low-pass filter; recurrent neural network; sampling frequency; space-vector PWM; space-vector pulsewidth modulation; square-wave mode; stator-flux-oriented vector control; stator-flux-oriented vector-controlled induction motor drive; stator-flux-vector estimation; symmetrical pulsewidth modulation pulses generation; transient performance; undermodulation region; very low frequency; voltage control; voltage model; Feedforward neural networks; Frequency estimation; Frequency synthesizers; Induction motor drives; Neural networks; Pulse width modulation; Recurrent neural networks; Space vector pulse width modulation; Stators; Support vector machines;
fLanguage :
English
Journal_Title :
Industry Applications, IEEE Transactions on
Publisher :
ieee
ISSN :
0093-9994
Type :
jour
DOI :
10.1109/28.952506
Filename :
952506
Link To Document :
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