Vibration signals, used for abnormality detection in machine health monitoring (MHM), exhibit significant variation with varying fault severity. This signal variation causes overlap among the features characterizing different types of faults, which results in severe performance degradation of the fault diagnostic model. In this paper, a wavelet based adaptive training set and feature selection (WATF) self-configuration scheme is presented, which selects the optimum wavelet decomposition level, and employs adaptive selection of the training set and features. Optimal wavelet decomposition level selection is such that the maximum fault signature-signal energy bands are achieved. The severity variant features, which could cause detrimental clas...
Early stage faults detection for machine health monitoring demands high level of fault classificatio...
Abstract The fusion of multiple monitoring sensors is crucial to improve the accuracy and robustness...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
Vibration signals used for abnormality detection in machine health monitoring (MHM) suffer from sign...
The study is focused on estimating the severity level of the bearing faults which helps in determini...
Vibration signals used for abnormality detection in machine health monitoring (MHM) suffer from sign...
Vibration signals used for abnormality detection in machine health monitoring (MHM) are non-stationa...
Inchoate fault detection for machine health monitoring (MHM) demands high level of fault classificat...
Current age has been primarily revolutionized by the increased use of rotary machines in our everyda...
In this paper, a new method was introduced for feature extraction and fault diagnosis in bearings ba...
Machine condition monitoring is an increasingly important area of research and plays an integral rol...
Fault diagnosis of rotating machinery mainly includes fault feature extraction and fault classificat...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
Integrated machine fault diagnosis is usually conducted by considering different types of signals so...
<div><p>A major issue of machinery fault diagnosis using vibration signals is that it is over-relian...
Early stage faults detection for machine health monitoring demands high level of fault classificatio...
Abstract The fusion of multiple monitoring sensors is crucial to improve the accuracy and robustness...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
Vibration signals used for abnormality detection in machine health monitoring (MHM) suffer from sign...
The study is focused on estimating the severity level of the bearing faults which helps in determini...
Vibration signals used for abnormality detection in machine health monitoring (MHM) suffer from sign...
Vibration signals used for abnormality detection in machine health monitoring (MHM) are non-stationa...
Inchoate fault detection for machine health monitoring (MHM) demands high level of fault classificat...
Current age has been primarily revolutionized by the increased use of rotary machines in our everyda...
In this paper, a new method was introduced for feature extraction and fault diagnosis in bearings ba...
Machine condition monitoring is an increasingly important area of research and plays an integral rol...
Fault diagnosis of rotating machinery mainly includes fault feature extraction and fault classificat...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
Integrated machine fault diagnosis is usually conducted by considering different types of signals so...
<div><p>A major issue of machinery fault diagnosis using vibration signals is that it is over-relian...
Early stage faults detection for machine health monitoring demands high level of fault classificatio...
Abstract The fusion of multiple monitoring sensors is crucial to improve the accuracy and robustness...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...