Automatic condition monitoring of electromechanical system based on MCSA, spectral kurtosis and SOM neural network
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Date
2019
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Abstract
Condition monitoring and fault diagnosis play the most important role in industrial
applications. The gearbox system is an essential component of mechanical system in fault
identification and classification domains. In this paper, we propose a new technique which is based
on the Fast-Kurtogram method and Self Organizing Map (SOM) neural network to automatically
diagnose two localized gear tooth faults: a pitting and a crack. These faults could have very
different diagnostics; however, the existing diagnostic techniques only indicate the presence of
local tooth faults without being able to differentiate between a pitting and a crack. With the aim
to automatically diagnose these two faults, a dynamic model of an electromechanical system
which is a simple stage gearbox with and without defect driven by a three phase induction machine
is proposed, which makes it possible to simulate the effect of pitting and crack faults on the
induction stator current signal. The simulated motor current signal is then analyzed by using a
Fast-Kurtogram method. Self-organizing map (SOM) neural network is subsequently used to
develop an automatic diagnostic system. This method is suitable for differentiating between a
pitting and a crack fault
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Keywords
Fast kurtogram, Gear faults detection, MCSA, Signal analysis, Self-organizing map, fault classification
