The detection of damage or abnormal behavior in machines is critical in industry, as it allows faulty components to be detected and repaired as early as possible, reducing downtime and minimizing operating and personnel costs. However, manual detection of machine fault sounds is economically inefficient and labor-intensive. While prior research has identified various methods to detect failures in drill machines using vibration or sound signals, there remain significant challenges. Most previous research in this field has used manual feature extraction and selection, which can be tedious and biased. Recent studies have used LSTM, end-to-end 1D CNN, and 2D CNN as classifiers, but these have limited accuracy for machine failure detection. Addi...
Detecting and preventing industrial machine failures are significant in the modern manufacturing ind...
Drilling tool wear can significantly affect the performance of the drilling operation and add extra ...
Many industrial facilities, amongst others, are very sensitive to any sudden hazards that can be exp...
In industry, it is crucial to be able to detect damage or abnormal behavior in machines. A machine's...
Monitoring the conditions of machines is vital in the manufacturing industry. Early detection of fau...
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...
Machine fault diagnosis (MFD) has gained an important enthusiasm since the unfolding of the pattern ...
Acoustic-based machine condition monitoring (MCM) provides an improved alternative to conventional M...
Anomaly detection without employing dedicated sensors for each industrial machine is recognized as o...
In the last decade, Anomalous Sound Detection (ASD) is becoming an increasingly challenging task for...
The objective of this thesis was to develop a system, which can interpret live audio data monitoring...
In an industrial environment, accurate fault diagnosis of machines is crucial to prevent shutdowns, ...
In this study, we aim to learn highly descriptive representations for a wide set of machinery sounds...
Recently, anomaly detection for improving the productivity of machinery in industrial environments h...
Detecting and preventing industrial machine failures are significant in the modern manufacturing ind...
Drilling tool wear can significantly affect the performance of the drilling operation and add extra ...
Many industrial facilities, amongst others, are very sensitive to any sudden hazards that can be exp...
In industry, it is crucial to be able to detect damage or abnormal behavior in machines. A machine's...
Monitoring the conditions of machines is vital in the manufacturing industry. Early detection of fau...
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...
Machine fault diagnosis (MFD) has gained an important enthusiasm since the unfolding of the pattern ...
Acoustic-based machine condition monitoring (MCM) provides an improved alternative to conventional M...
Anomaly detection without employing dedicated sensors for each industrial machine is recognized as o...
In the last decade, Anomalous Sound Detection (ASD) is becoming an increasingly challenging task for...
The objective of this thesis was to develop a system, which can interpret live audio data monitoring...
In an industrial environment, accurate fault diagnosis of machines is crucial to prevent shutdowns, ...
In this study, we aim to learn highly descriptive representations for a wide set of machinery sounds...
Recently, anomaly detection for improving the productivity of machinery in industrial environments h...
Detecting and preventing industrial machine failures are significant in the modern manufacturing ind...
Drilling tool wear can significantly affect the performance of the drilling operation and add extra ...
Many industrial facilities, amongst others, are very sensitive to any sudden hazards that can be exp...