Title :
Pattern recognition-a technique for induction machines rotor broken bar detection
Author :
Haji, Masoud ; Toliyat, Hamid A.
Author_Institution :
Dept. of Electr. Eng., Texas A&M Univ., College Station, TX, USA
fDate :
12/1/2001 12:00:00 AM
Abstract :
A pattern recognition technique based on Bayes minimum error classifier is developed to detect broken rotor bar faults in induction motors at the steady state. The proposed algorithm uses only stator currents as input without the need for any other variables. Initially, rotor speed is estimated from the stator currents, then appropriate features are extracted. The produced feature vector is normalized and fed to the trained classifier to see if the motor is healthy or has broken bar faults. Only the number of poles and rotor slots are needed as pre-knowledge information. A theoretical approach together with experimental results derived from a 3 hp AC induction motor show the strength of the proposed method. In order to cover many different motor load conditions, data are obtained from 10% to 130% of the rated load for both a healthy induction motor and an induction motor with a rotor having 4 broken bars
Keywords :
Bayes methods; electrical faults; fault diagnosis; induction motors; machine testing; machine theory; parameter estimation; pattern recognition; rotors; stators; 3 hp; Bayes minimum error classifier; broken rotor bar faults detection; fault diagnosis; feature vector; induction machine rotor broken bar detection; induction motor; motor load conditions; pattern recognition technique; poles number; rotor slots number; rotor speed; speed estimation; statistical classifier; stator currents; Bars; Data mining; Fault detection; Feature extraction; Induction machines; Induction motors; Pattern recognition; Rotors; Stators; Steady-state;
Journal_Title :
Energy Conversion, IEEE Transactions on