International audienceIn bearing fault diagnosis, ensemble empirical mode decomposition (EEMD) is a reliable technique for treating rolling bearing vibration signals by dividing them into intrinsic mode functions (IMFs). Traditional methods used in EEMD consist of identifying IMFs containing the fault information and reconstructing them. However, an incorrect selection can result in the loss of useful IMFs or the addition of unnecessary ones. To overcome this drawback, this paper presents a novel method called combined modes ensemble empirical mode decomposition (CMEEMD) to directly obtain a combination of useful IMFs containing fault information. This is without needing to pass through the processes of IMF selection and reconstruction, as ...
Rolling bearings are one of the most widely used and most likely to fail components in the vast majo...
A bearing fault diagnosis approach based on spectral kurtosis and empirical mode decomposition (EMD)...
Rolling bearings are widely used in rotating machinery and their fault is one of the most common cau...
The vibration signals provide useful information about the state of rolling bearing and the diagnosi...
In order to improve the effectiveness for identifying rolling bearing faults at an early stage, the ...
<div><p>A Compound fault signal usually contains multiple characteristic signals and strong confusio...
A Compound fault signal usually contains multiple characteristic signals and strong confusion noise,...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
A novel methodology for the fault diagnosis of rolling bearing in strong background noise, based on ...
Roller bearings are the most widely used and easily damaged mechanical parts in rotating machinery. ...
International audienceThis paper investigates the bearing fault detection using vibration signals. F...
As an important part of rotating machinery, bearings play an important role in large-scale mechanica...
Complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) effectively separates t...
There are always the nonlinear and non-stationary characteristics and periodic pulse in vibration si...
In order to accurately identify the fault conditions of rolling bearing, this paper presents a fault...
Rolling bearings are one of the most widely used and most likely to fail components in the vast majo...
A bearing fault diagnosis approach based on spectral kurtosis and empirical mode decomposition (EMD)...
Rolling bearings are widely used in rotating machinery and their fault is one of the most common cau...
The vibration signals provide useful information about the state of rolling bearing and the diagnosi...
In order to improve the effectiveness for identifying rolling bearing faults at an early stage, the ...
<div><p>A Compound fault signal usually contains multiple characteristic signals and strong confusio...
A Compound fault signal usually contains multiple characteristic signals and strong confusion noise,...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
A novel methodology for the fault diagnosis of rolling bearing in strong background noise, based on ...
Roller bearings are the most widely used and easily damaged mechanical parts in rotating machinery. ...
International audienceThis paper investigates the bearing fault detection using vibration signals. F...
As an important part of rotating machinery, bearings play an important role in large-scale mechanica...
Complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) effectively separates t...
There are always the nonlinear and non-stationary characteristics and periodic pulse in vibration si...
In order to accurately identify the fault conditions of rolling bearing, this paper presents a fault...
Rolling bearings are one of the most widely used and most likely to fail components in the vast majo...
A bearing fault diagnosis approach based on spectral kurtosis and empirical mode decomposition (EMD)...
Rolling bearings are widely used in rotating machinery and their fault is one of the most common cau...