Title :
Rotor Bar Fault Monitoring Method Based on Analysis of Air-Gap Torques of Induction Motors
Author :
da Silva, Arlindo M. ; Povinelli, Richard J. ; Demerdash, Nabeel A. O.
Author_Institution :
Marquette Univ., Milwaukee, WI, USA
Abstract :
A robust method to monitor the operating conditions of induction motors is presented. This method utilizes the data analysis of the air-gap torque profile in conjunction with a Bayesian classifier to determine the operating condition of an induction motor as either healthy or faulty. This method is trained offline with datasets generated either from an induction motor modeled by a time-stepping finite-element (TSFE) method or experimental data. This method can effectively monitor the operating conditions of induction motors that are different in frame/class, ratings, or design from the motor used in the training stage. Such differences can include the level of load torque and operating frequency. This is due to a novel air-gap torque normalization method introduced here, which leads to a motor fault classification process independent of these parameters and with no need for prior information about the motor being monitored. The experimental results given in this paper validate the robustness and efficacy of this method. Additionally, this method relies exclusively on data analysis of motor terminal operating voltages and currents, without relying on complex motor modeling or internal performance parameters not readily available.
Keywords :
condition monitoring; finite element analysis; induction motors; rotors; torque; Bayesian classifier; air-gap torque profile; air-gap torques analysis; complex motor modeling; data analysis; induction motors; internal performance parameters; leads air-gap torque normalization method; load torque; motor fault classification process; motor terminal operating voltages; operating condition monitoring; rotor bar fault monitoring method; time-stepping finite-element method; Air gaps; Fault diagnosis; Gaussian mixture model; Induction motors; Monitoring; Torque; Air-gap torque; Gaussian mixture models (GMMs); broken bars; fault diagnostics; induction machines; monitoring of induction motors; reconstructed phase space; speed estimator; torque estimator;
Journal_Title :
Industrial Informatics, IEEE Transactions on
DOI :
10.1109/TII.2013.2242084