Automatic and Efficient Fault Detection in Rotating Machinery using Sound Signals

被引:0
|
作者
Muhammad Altaf
Muhammad Uzair
Muhammad Naeem
Ayaz Ahmad
Saeed Badshah
Jawad Ali Shah
Almas Anjum
机构
[1] COMSATS University Islamabad,
[2] University of South Australia,undefined
[3] Department of Mechanical Engineering,undefined
[4] International Islamic University,undefined
[5] Electronic Section,undefined
[6] British Malaysian Institute,undefined
[7] EME,undefined
[8] NUST,undefined
来源
Acoustics Australia | 2019年 / 47卷
关键词
Acoustic signal analysis; Condition-based maintenance; Time domain analysis; Frequency domain analysis; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
Vibration and acoustic emission have received great attention of the research community for condition-based maintenance in rotating machinery. Several signal processing algorithms were either developed or used efficiently to detect and classify faults in bearings and gears. These signals are recorded, using sensors like tachometer or accelerometer, connected directly or mounted very close to the system under observation. This is not a feasible option in case of complex machinery and/or temperature and humidity. Therefore, it is required to sense the signals remotely, in order to reduce installation and maintenance cost. However, its installation far away from the intended device may pollute the required signal with other unwanted signals. In an attempt to address these issues, sound signal-based fault detection and classification in rotating bearings is presented. In this research work, audible sound of machine under test is captured using a single microphone and different statistical, spectral and spectro-temporal features are extracted. The selected features are then analyzed using different machine learning techniques, such as K-nearest neighbor (KNN) classifier, support vector machine (SVM), kernel liner discriminant analysis (KLDA) and sparse discriminant analysis (SDA). Simulation results show successful classification of faults into ball fault, inner and outer race faults. Best results were achieved using the KLDA followed by SDA, KNN and SVM. As far as features are concerned, the average FFT outperformed all the other features, followed by average PSD, RMS values of PSD, PSD and STFT.
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页码:125 / 139
页数:14
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