Title :
Neural network based speed sensorless induction motor drives with Kalman filter approach
Author :
Kim, Yoon-Ho ; Kook, Yoon-Sang
Author_Institution :
Chungang Univ., Seoul, South Korea
fDate :
31 Aug-4 Sep 1998
Abstract :
This paper presents a newly developed speed sensorless drive using Kalman filters based on artificial neural network training algorithm. The proposed algorithm based on the extended Kalman filter has a time-varying learning rate, while the well-known backpropagation (or generalized delta rule) algorithm based on gradient descent has a constant learning rate. The number of iterations required by the new algorithm to converge is less than that of the backpropagation algorithm. The Kalman filter based on NN is used to adjust the motor speed so that the neural model output follows the desired trajectory. This mechanism forces the estimated speed to follow precisely the actual motor speed. In this paper, a flux estimation strategy using filter concept is discussed. The theoretical analysis and experimental results to verify the effectiveness of the proposed analysis and the proposed control strategy are described
Keywords :
Kalman filters; control system analysis; control system synthesis; filtering theory; induction motor drives; learning (artificial intelligence); machine theory; machine vector control; neurocontrollers; velocity control; Kalman filters; artificial neural network; control design; control simulation; control strategy; extended Kalman filter; flux estimation strategy; induction motor drives; iterations; speed sensorless neurocontrol; time-varying learning rate; training algorithm; Circuits; Induction motor drives; Kalman filters; Low pass filters; Neural networks; Nonlinear systems; Rotors; State estimation; Stators; Voltage;
Conference_Titel :
Industrial Electronics Society, 1998. IECON '98. Proceedings of the 24th Annual Conference of the IEEE
Conference_Location :
Aachen
Print_ISBN :
0-7803-4503-7
DOI :
10.1109/IECON.1998.724230