Acoustic-based machine condition monitoring (MCM) provides an improved alternative to conventional MCM approaches, including vibration analysis and lubrication monitoring, among others. Several challenges arise in anomalous machine operating sound classification, as it requires effective 2D acoustic signal representation. This paper explores this question. A baseline convolutional neural network (CNN) is implemented and trained with rolling element bearing acoustic fault data. Three representations are considered, such as log-spectrogram, short-time Fourier transform and log-Mel spectrogram. The results establish log-Mel spectrogram and log-spectrogram, as promising candidates for further exploration.Peer reviewe
Anomaly detection without employing dedicated sensors for each industrial machine is recognized as o...
In this study, we aim to learn highly descriptive representations for a wide set of machinery sounds...
Detecting and preventing industrial machine failures are significant in the modern manufacturing ind...
The detection of damage or abnormal behavior in machines is critical in industry, as it allows fault...
Nowadays monitoring health conditions of machines is necessary to reduce costs and repairing time an...
In industry, it is crucial to be able to detect damage or abnormal behavior in machines. A machine's...
In an industrial environment, accurate fault diagnosis of machines is crucial to prevent shutdowns, ...
Condition monitoring and fault diagnosis of industrial equipment have become increasingly important ...
Abstract Induction motors play a major role in the industry nowadays due to their simple constructio...
This paper proposes to apply a machine hearing framework for industrial fault diagnosis, which is in...
In industry, the ability to detect damage or abnormal functioning in machinery is very important. Ho...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
Currently gear fault diagnosis is mainly based on vibration signals with a few studies on acoustic s...
Machine fault diagnosis (MFD) has gained an important enthusiasm since the unfolding of the pattern ...
Monitoring the conditions of machines is vital in the manufacturing industry. Early detection of fau...
Anomaly detection without employing dedicated sensors for each industrial machine is recognized as o...
In this study, we aim to learn highly descriptive representations for a wide set of machinery sounds...
Detecting and preventing industrial machine failures are significant in the modern manufacturing ind...
The detection of damage or abnormal behavior in machines is critical in industry, as it allows fault...
Nowadays monitoring health conditions of machines is necessary to reduce costs and repairing time an...
In industry, it is crucial to be able to detect damage or abnormal behavior in machines. A machine's...
In an industrial environment, accurate fault diagnosis of machines is crucial to prevent shutdowns, ...
Condition monitoring and fault diagnosis of industrial equipment have become increasingly important ...
Abstract Induction motors play a major role in the industry nowadays due to their simple constructio...
This paper proposes to apply a machine hearing framework for industrial fault diagnosis, which is in...
In industry, the ability to detect damage or abnormal functioning in machinery is very important. Ho...
The use of acoustic emission analysis to detect problems in mechanical parts has gained increasing a...
Currently gear fault diagnosis is mainly based on vibration signals with a few studies on acoustic s...
Machine fault diagnosis (MFD) has gained an important enthusiasm since the unfolding of the pattern ...
Monitoring the conditions of machines is vital in the manufacturing industry. Early detection of fau...
Anomaly detection without employing dedicated sensors for each industrial machine is recognized as o...
In this study, we aim to learn highly descriptive representations for a wide set of machinery sounds...
Detecting and preventing industrial machine failures are significant in the modern manufacturing ind...