Vibration signals used for abnormality detection in machine health monitoring (MHM) suffer from significant variation with fault severity. This variation causes overlap among the features belonging to different types of faults resulting in severe degradation of fault detection accuracy. This paper identifies a new problem due to severity variant features and proposes a novel adaptive training set and feature selection (ATSFS) scheme based upon the orientation of the test data. In order to build ATSFS and validate its performance, training and testing data are obtained from different severity levels. To capture the non-stationary behavior of vibration signal, robust tools such as wavelet transform (WT) for time-frequency analysis are employe...
Vibration analysis has proven to be the most effective method for machine condition monitoring to da...
The spindle of machining centers must provide high rotational speed, transfer torque and power to th...
Many machines generate nonstationary dynamic signals. The featured components of such signals, such ...
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) suffer from sign...
Vibration signals, used for abnormality detection in machine health monitoring (MHM), exhibit signif...
Inchoate fault detection for machine health monitoring (MHM) demands high level of fault classificat...
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) are non-stationa...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
Current age has been primarily revolutionized by the increased use of rotary machines in our everyda...
Early stage faults detection for machine health monitoring demands high level of fault classificatio...
Machine condition monitoring is an increasingly important area of research and plays an integral rol...
Integrated machine fault diagnosis is usually conducted by considering different types of signals so...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
Vibration analysis has proven to be the most effective method for machine condition monitoring to da...
The spindle of machining centers must provide high rotational speed, transfer torque and power to th...
Many machines generate nonstationary dynamic signals. The featured components of such signals, such ...
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) suffer from sign...
Vibration signals, used for abnormality detection in machine health monitoring (MHM), exhibit signif...
Inchoate fault detection for machine health monitoring (MHM) demands high level of fault classificat...
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) are non-stationa...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
Current age has been primarily revolutionized by the increased use of rotary machines in our everyda...
Early stage faults detection for machine health monitoring demands high level of fault classificatio...
Machine condition monitoring is an increasingly important area of research and plays an integral rol...
Integrated machine fault diagnosis is usually conducted by considering different types of signals so...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
Vibration analysis has proven to be the most effective method for machine condition monitoring to da...
The spindle of machining centers must provide high rotational speed, transfer torque and power to th...
Many machines generate nonstationary dynamic signals. The featured components of such signals, such ...