Fault Diagnosis of Electric Motors Using Vibration Signal Analysis
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EIED, Thapar University
Abstract
Electric motors find their application in almost every industry or plant. As the processes of
various plants rely on these machines, presence of any fault in the motor is a matter of great
concern and in such situations an efficient fault diagnosing technique must be developed to
locate the fault and rectify it in least possible duration.
As motor bearing faults are the most abundant faults present in an electric motor, this
research work presents fault diagnosis methods of these faults using vibration signal analysis.
A public domain vibration database containing vibration signals acquired both for normal
operation as well as motor’s operation with inner and outer raceway, rolling element faults
present was used for analysis. The presence of bearing faults in the motor was detected using
time domain analysis of statistical features of vibration data. Further the fault location was
fetched using cepstrum analysis of vibration signals. Then lastly, fault classification was
performed using Support Vector Machine (SVM), Artificial Neural Network (ANN) and KNearest
Neighbour (KNN) classifiers. Two different cases of faults were considered, first
with faults of uniform dimensions and second with faults of varying dimensions introduced in
the motor bearing components.
A hybrid model for bearing fault diagnosis and severity level classification has been proposed
in this research work. The cepstrum analysis technique presented possesses the capability to
locate any type of bearing fault present. The classifiers used have produced high accuracy
for bearing fault classification and also detected the severity level of the fault present.
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Master's Thesis
