Feature Extraction for the Prognosis of Electromechanical Faults in Electrical Machines through the DWT

نویسندگان

  • Jose A. Antonino-Daviu
  • Martin Riera-Guasp
  • Manuel Pineda-Sánchez
  • Joan Pons-Llinares
  • Ruben Puche-Panadero
  • Juan Pérez-Cruz
چکیده

Recognition of characteristic patterns is proposed in this paper in order to diagnose the presence of electromechanical faults in induction electrical machines. Two common faults are considered; broken rotor bars and mixed eccentricities. The presence of these faults leads to the appearance of frequency components following a very characteristic evolution during the startup transient. The identification and extraction of these characteristic patterns through the Discrete Wavelet Transform (DWT) have been proven to be a reliable methodology for diagnosing the presence of these faults, showing certain advantages in comparison with the classical FFT analysis of the steady-state current. In the paper, a compilation of healthy and faulty cases are presented; they confirm the validity of the approach for the correct diagnosis of a wide range of electromechanical faults.

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عنوان ژورنال:
  • Int. J. Computational Intelligence Systems

دوره 2  شماره 

صفحات  -

تاریخ انتشار 2009