Title of article :
NOVEL WAVELET ANN TECHNIQUE TO CLASSIFY BEARING FAULTS IN THREE PHASE INDUCTION MOTOR
Author/Authors :
Jawadekar، Anjali U. نويسنده , , Dhole، Gajanan Madhukar نويسنده , , Paraska، Sudhir Ramdasrao نويسنده , , Beg، Mirza Ansar نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Three phase induction motors are the
‘workhorses’ of industry and are the most widely used
electrical machines. For this reason detection of motor
failures is very important. Bearing problems is one of the
major causes for drive failures. Early detection of bearing
faults allows replacements of the bearings rather than
replacement of motor. Present contribution reports
experimental results for monitoring of bearing faults in
induction motor. Motor line currents have been analyzed
using modern signal processing and data reduction tool
combing Park’s Transformation and Discrete Wavelet
Transform (DWT). Feed Forward Artificial Neural
(FFANN) based data classification tool is used for fault
characterization based on DWT features extracted from
Park’s Current Vector Pattern. An online algorithm is
tested successfully on three phase induction motor and
experimental results are presented to demonstrate the
effectiveness of the proposed method which can reliably
distinguish the inner race and outer race defects of the
bearing. Experimental results are presented to
demonstrate the effectiveness of the proposed method.
Journal title :
International Journal on Technical and Physical Problems of Engineering (IJTPE)
Journal title :
International Journal on Technical and Physical Problems of Engineering (IJTPE)