Title :
Speed-Sensorless Vector Control of a Bearingless Induction Motor With Artificial Neural Network Inverse Speed Observer
Author :
Xiaodong Sun ; Long Chen ; Zebin Yang ; Huangqiu Zhu
Author_Institution :
Sch. of Electr. & Inf. Eng., Jiangsu Univ., Zhenjiang, China
Abstract :
To effectively reject the influence of speed detection on system stability and precision for a bearingless induction motor, this paper proposes a novel speed observation scheme using artificial neural network (ANN) inverse method. The inherent subsystem consisting of speed and torque winding currents is modeled, and then its inversion is implemented by the ANN. The speed is successfully observed via cascading the original subsystem with its inversion. The observed speed is fed back in the speed control loop, and thus, the speed-sensorless vector drive is realized. The effectiveness of this proposed strategy has been demonstrated by experimental results.
Keywords :
angular velocity control; induction motors; machine bearings; neurocontrollers; observers; sensorless machine control; torque control; ANN inverse method; artificial neural network inverse speed observer; bearingless induction motor; inherent subsystem; novel speed observation scheme; speed control loop; speed detection; speed sensorless vector control; speed winding currents; torque winding currents; Artificial neural networks; Force; Induction motors; Observers; Suspensions; Torque; Windings; Artificial neural network (ANN) inverse; bearingless induction motor (BIM); speed-sensorless; vector control;
Journal_Title :
Mechatronics, IEEE/ASME Transactions on
DOI :
10.1109/TMECH.2012.2202123