Abstract:
Fault diagnosis of an electro-mechanical system (EMS) has been a real challenge
for the engineers. For increasing operational reliability and machine availability, it
becomes essential to monitor the operation of an electro-mechanical system for the
detection and diagnosis of faults. Keeping the above facts in mind, this research is
aimed at investigating the relationship between vibration and motor current signature
analysis (MCSA) for faults such as - bent and unbalanced rotors, ball bearings and
gears with seeded faults in the mechanical load components coupled with an induction
machine.
A mathematical model has been developed to understand the effects of loading
on the induction motors. Along with this, a test rig with associated instrumentation for
simulation of faults like - bent rotors, bearings and gears with seeded faults has been
developed in the lab for performing experiments. In the first study on shafts, combined
unbalance and bowed shaft faults have been investigated using Fourier transform and
Hilbert-Huang transform. Machine learning techniques like artificial neural networks
(ANNs) and support vector machines (SVMs) have been applied for the fault detection
of shaft faults in the second part of this study on shafts.
A unique case of detection of faulty bearing installed in a load machine coupled to
an induction motor. Time domain and frequency domain spectrum of the stator current
signals acquired and analyzed for the detection of an outer race fault of the ball bearing
installed in the load machine and is a step towards building a diagnosis model of typical
bearing faults occurring in mechanical load systems using MCSA. It has been found
that the energy levels at fault scale increased with the severity of the bearing fault. A
signal processing algorithm involving auto regressive (AR) based linear prediction filter,
minimum entropy deconvolution (MED) and spectral kurtosis (SK) has been used for
separating impulses from the faulty current signal and enhancing them by effectively
deconvoluting the impulses. Time domain current signals of the healthy and faulty
bearing (outer race fault) with various defect sizes have been acquired and spectrally
analyzed for the bearing fault frequencies. In present study, we have also investigated the bevel gear faults. The response of
gear signatures (healthy and faulty) have been acquired using vibration and current
sensors. Advance signal processing technique such as continuous wavelet transform has
been used to detect and compare the bevel gear faults.