Signature extraction from acoustic signals and its application for ANN based engine fault diagnosis Online publication date: Wed, 31-Dec-2014
by Om Prakash; Vrijendra Singh; Prem Kumar Kalra
International Journal of Signal and Imaging Systems Engineering (IJSISE), Vol. 5, No. 3, 2012
Abstract: In present study, the approach of signature extraction from acoustic signals based on Short Time Fourier Transform (STFT) and its use for Artificial Neural Network (ANN) based fault diagnosis of internal combustion engine is explored. STFT can provide a time-frequency resolution data for signal signature extraction. It is suitable for extracting mechanical fault information form acoustic signals. In present work, a protocol of time dependent frequency information for development of signature and its application in engine fault diagnosis is proposed. The results of the protocol application show that the extracted signatures of seven classes of acoustic signals as engine fault information are effective for the development of classification model.
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