In order to enhance the capability of feature extraction and fault classification of bearings, this study proposes a feature extraction approach based on dual-tree complex wavelet transform (DTCWT) and permutation entropy (PE), using the fuzzy c means clustering (FCM) to identify fault types. The vibration signal of bearings can be decomposed into several wavelet components with DTCWT which can describe the local characteristics of vibration signals accurately. And the PE of each wavelet component, which can describe the complexity of a time series, is calculated to be regarded as the fault features. Then forming the standard clustering centers by the FCM, we defined a standard using the Hamming approach degree to evaluate the classificatio...
Fault diagnosis plays a vital role in prognostics and health management. Researchers have devoted th...
When rolling bearings have a local fault, the real bearing vibration signal related to the local fau...
A novel bearing vibration signal fault feature extraction and recognition method based on the improv...
In order to enhance the capability of feature extraction and fault classification of bearings, this ...
Feature extraction is one of the most difficult aspects of mechanical fault diagnosis, and it is dir...
A novel method of fault diagnosis for rolling bearing, which combines the dual tree complex wavelet ...
Bearing is a widely used rotating component in most of the industrial machinery. Failure of bearings...
When the vibration signals of the rolling bearings contain strong interference noise, the spectrum d...
In order to improve the fault detection accuracy for rolling bearings, an automated fault diagnosis ...
Fault diagnosis of rotating machinery is vital to identify incipient failures and avoid unexpected d...
Fault diagnosis of rotating machinery is vital to identify incipient failures and avoid unexpected d...
In this paper, a new method was introduced for feature extraction and fault diagnosis in bearings ba...
Timely and accurate state detection and fault diagnosis of rolling element bearings are very critica...
A new feature extraction method based on WPD and Entropy is proposed in this paper. Firstly, WPD is ...
Bearings are very critical components in all rotating machines used in the majority of the industrie...
Fault diagnosis plays a vital role in prognostics and health management. Researchers have devoted th...
When rolling bearings have a local fault, the real bearing vibration signal related to the local fau...
A novel bearing vibration signal fault feature extraction and recognition method based on the improv...
In order to enhance the capability of feature extraction and fault classification of bearings, this ...
Feature extraction is one of the most difficult aspects of mechanical fault diagnosis, and it is dir...
A novel method of fault diagnosis for rolling bearing, which combines the dual tree complex wavelet ...
Bearing is a widely used rotating component in most of the industrial machinery. Failure of bearings...
When the vibration signals of the rolling bearings contain strong interference noise, the spectrum d...
In order to improve the fault detection accuracy for rolling bearings, an automated fault diagnosis ...
Fault diagnosis of rotating machinery is vital to identify incipient failures and avoid unexpected d...
Fault diagnosis of rotating machinery is vital to identify incipient failures and avoid unexpected d...
In this paper, a new method was introduced for feature extraction and fault diagnosis in bearings ba...
Timely and accurate state detection and fault diagnosis of rolling element bearings are very critica...
A new feature extraction method based on WPD and Entropy is proposed in this paper. Firstly, WPD is ...
Bearings are very critical components in all rotating machines used in the majority of the industrie...
Fault diagnosis plays a vital role in prognostics and health management. Researchers have devoted th...
When rolling bearings have a local fault, the real bearing vibration signal related to the local fau...
A novel bearing vibration signal fault feature extraction and recognition method based on the improv...