Roller bearings are the most widely used and easily damaged mechanical parts in rotating machinery. Their running state directly affects rotating machinery performance. Empirical mode decomposition (EMD) easily occurs illusive component and mode mixing problem. From the view of feature extraction, a new feature extraction method based on integrating ensemble empirical mode decomposition (EEMD), the correlation coefficient method, and Hilbert transform is proposed to extract fault features and identify fault states for motor bearings in this paper. In the proposed feature extraction method, the EEMD is used to decompose the vibration signal into a series of intrinsic mode functions (IMFs) with different frequency components. Then the correla...
In order to raise the working reliability of rotating machinery in real applications and reduce the ...
A Compound fault signal usually contains multiple characteristic signals and strong confusion noise,...
Compared with the strong background noise, the energy entropy of early fault signals of bearings are...
Roller bearings are the most widely used and easily damaged mechanical parts in rotating machinery. ...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
A bearing is one of the important components in rotatory machines and has been widely used in variou...
Nowadays, the fault diagnosis of rolling bearing in aeroengines is based on the vibration signal mea...
International audienceIn bearing fault diagnosis, ensemble empirical mode decomposition (EEMD) is a ...
In order to raise the working reliability of rotating machinery in real applications and reduce the ...
International audienceThis paper presents an innovative approach to the extraction of an indicator f...
International audienceThis paper presents an innovative approach to the extraction of an indicator f...
International audienceThis paper presents an innovative approach to the extraction of an indicator f...
A method is proposed to improve the feature extraction of vibration signals of rotating machinery. F...
A method is proposed to improve the feature extraction of vibration signals of rotating machinery. F...
The vibration based signal processing technique is one of the principal tools for diagnosing faults ...
In order to raise the working reliability of rotating machinery in real applications and reduce the ...
A Compound fault signal usually contains multiple characteristic signals and strong confusion noise,...
Compared with the strong background noise, the energy entropy of early fault signals of bearings are...
Roller bearings are the most widely used and easily damaged mechanical parts in rotating machinery. ...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
A bearing is one of the important components in rotatory machines and has been widely used in variou...
Nowadays, the fault diagnosis of rolling bearing in aeroengines is based on the vibration signal mea...
International audienceIn bearing fault diagnosis, ensemble empirical mode decomposition (EEMD) is a ...
In order to raise the working reliability of rotating machinery in real applications and reduce the ...
International audienceThis paper presents an innovative approach to the extraction of an indicator f...
International audienceThis paper presents an innovative approach to the extraction of an indicator f...
International audienceThis paper presents an innovative approach to the extraction of an indicator f...
A method is proposed to improve the feature extraction of vibration signals of rotating machinery. F...
A method is proposed to improve the feature extraction of vibration signals of rotating machinery. F...
The vibration based signal processing technique is one of the principal tools for diagnosing faults ...
In order to raise the working reliability of rotating machinery in real applications and reduce the ...
A Compound fault signal usually contains multiple characteristic signals and strong confusion noise,...
Compared with the strong background noise, the energy entropy of early fault signals of bearings are...