When early failures in rolling bearings occur, we need to be able to extract weak fault characteristic frequencies under the influence of strong noise and then perform fault diagnosis. Therefore, a new method is proposed: complete ensemble intrinsic time-scale decomposition with adaptive Lévy noise (CEITDALN). This method solves the problem of the traditional complete ensemble intrinsic time-scale decomposition with adaptive noise (CEITDAN) method not being able to filter nonwhite noise in measured vibration signal noise. Therefore, in the method proposed in this paper, a noise model in the form of parameter-adjusted noise is used to replace traditional white noise. We used an optimization algorithm to adaptively adjust the model parameters, reducing the impact of nonwhite noise on the feature frequency extraction. The experimental results for the simulation and vibration signals of rolling bearings showed that the CEITDALN method could extract weak fault features more effectively than traditional methods.
CITATION STYLE
Ma, J., Zhuo, S., Li, C., Zhan, L., & Zhang, G. (2021). An enhanced intrinsic time-scale decomposition method based on adaptive lévy noise and its application in bearing fault diagnosis. Symmetry, 13(4). https://doi.org/10.3390/sym13040617
Mendeley helps you to discover research relevant for your work.