In order to raise the working reliability of rotating machinery in real applications and reduce the loss caused by unintended breakdowns, a new method based on improved ensemble empirical mode decomposition (EEMD) and envelope spectrum analysis is proposed for fault diagnosis in this paper. First, the collected vibration signals are decomposed into a series of intrinsic mode functions (IMFs) by the improved EEMD (IEEMD). Then, the envelope spectrums of the selected decompositions of IEEMD are analyzed to calculate the energy values within the frequency bands around speed and bearing fault characteristic frequencies (CDFs) as features for fault diagnosis based on support vector machine (SVM). Experiments are carried out to test the effective...
In order to accurately identify the fault conditions of rolling bearing, this paper presents a fault...
A intelligent rolling bearing fault diagnosis method is proposed on Empirical Mode Decomposition (EM...
The present work proposes a new technique for bearing fault classification that combines time-freque...
In order to raise the working reliability of rotating machinery in real applications and reduce the ...
The fault diagnosis of rotating machinery has crucial significance for the safety of modern industry...
The vibration based signal processing technique is one of the principal tools for diagnosing faults ...
Aiming at the problems of low accuracy of non-stationary signal spectrum analysis in rotating machin...
Rolling bearings are widely used in rotating machinery and their fault is one of the most common cau...
Roller bearings are the most widely used and easily damaged mechanical parts in rotating machinery. ...
In order to achieve the bearing fault diagnosis so as to ensure the steadiness of rotating machinery...
The vibration signals provide useful information about the state of rolling bearing and the diagnosi...
Abstract Early fault diagnosis of roller bearings is extremely important for rotating machines, espe...
AbstractThe fault spectral precision plays a significant role in the field of mechanical diagnosis. ...
The variational mode decomposition (VMD) method for signal decomposition is severely affected by the...
Aiming at the impact feature in fault signals of the rolling bearings,The improved algorithm diagnos...
In order to accurately identify the fault conditions of rolling bearing, this paper presents a fault...
A intelligent rolling bearing fault diagnosis method is proposed on Empirical Mode Decomposition (EM...
The present work proposes a new technique for bearing fault classification that combines time-freque...
In order to raise the working reliability of rotating machinery in real applications and reduce the ...
The fault diagnosis of rotating machinery has crucial significance for the safety of modern industry...
The vibration based signal processing technique is one of the principal tools for diagnosing faults ...
Aiming at the problems of low accuracy of non-stationary signal spectrum analysis in rotating machin...
Rolling bearings are widely used in rotating machinery and their fault is one of the most common cau...
Roller bearings are the most widely used and easily damaged mechanical parts in rotating machinery. ...
In order to achieve the bearing fault diagnosis so as to ensure the steadiness of rotating machinery...
The vibration signals provide useful information about the state of rolling bearing and the diagnosi...
Abstract Early fault diagnosis of roller bearings is extremely important for rotating machines, espe...
AbstractThe fault spectral precision plays a significant role in the field of mechanical diagnosis. ...
The variational mode decomposition (VMD) method for signal decomposition is severely affected by the...
Aiming at the impact feature in fault signals of the rolling bearings,The improved algorithm diagnos...
In order to accurately identify the fault conditions of rolling bearing, this paper presents a fault...
A intelligent rolling bearing fault diagnosis method is proposed on Empirical Mode Decomposition (EM...
The present work proposes a new technique for bearing fault classification that combines time-freque...