Title :
Tuning the stator resistance of induction motors using artificial neural network
Author :
Cabrera, L.A. ; Elbuluk, M.E. ; Husain, I.
Author_Institution :
Dept. of Electr. Eng., Akron Univ., OH, USA
Abstract :
Tuning the stator resistance of induction motors is very important, especially when it is used to implement direct torque control (DTC) in which the stator resistance is a main parameter. In this paper, an artificial network (ANN) is used to accomplish tuning of the stator resistance of an induction motor. The parallel recursive prediction error and backpropagation training algorithms were used in training the neural network for the simulation and experimental results, respectively. The neural network used to tune the stator resistance was trained on-line, making the DTC strategy more robust and accurate. Simulation results are presented for three different neural-network configurations showing the efficiency of the tuning process. Experimental results were obtained for one of the three neural-network configurations. Both simulation and experimental results showed that the ANN have tuned the stator resistance in the controller to track actual resistance of the machine.
Keywords :
backpropagation; electric resistance; induction motors; machine control; neural nets; power engineering computing; recursive estimation; stators; torque control; artificial neural network; backpropagation training algorithms; direct torque control; induction motors; parallel recursive prediction error; resistance tracking; stator resistance tuning; Artificial neural networks; Biological neural networks; Electrical resistance measurement; Electromagnetic measurements; Equations; Immune system; Induction motors; Robustness; Stators; Torque control;
Journal_Title :
Power Electronics, IEEE Transactions on