QIAO Meiying, LIU Yuxiang, LAN Jianyi. Fault diagnosis method of rolling bearings based on VMD and mahalanobis distance SVM[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2019,58(5):8-16.
QIAO Meiying, LIU Yuxiang, LAN Jianyi. Fault diagnosis method of rolling bearings based on VMD and mahalanobis distance SVM[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2019,58(5):8-16. DOI: 10.13471/j.cnki.acta.snus.2019.05.002.
It is difficult to identify the early fault of the rolling bearings. A diagnosis method based on variational mode decomposition (VMD) and Mahalanobis distance support vector machine (SVM) is proposed. Firstly
the original vibration signal is de-noised by wavelet threshold method to obtain effective vibration signal. Secondly
according to the center frequency of each mode after VMD decomposition
the final number of decomposed layers is determined. At the same time
the energy characteristics are extracted from the decomposed variational modal components. Finally
in order to measure distance between samples more accurately
Mahalanobis distance is introduced into the calculation of the Gaussian kernel function of the SVM
and a Gaussian function kernel based on Mahalanobis distance is established
which is used to support the vector machine classifier. Improved SVM is employed to identify the running state of the bearing
the experimental results show that the proposed method has high accuracy in identifying the normal state
the inner ring
the outer ring and the ball body fault of bearings.