Abstract
AbstractAs a critical and fragile rotary supporting component in mechanical equipment, fault diagnosis of rolling bearing has been a hot issue. A rolling bearing fault diagnosis technique based on fined-grained multi-scale symbolic entropy and whale optimization algorithm-multiclass support vector machine (abbreviated as FGMSE-WOA-MSVM) is proposed in this paper. Firstly, the vibration signals are decomposed with fine-grained multi-scale decomposition, and the symbolic entropy of the sub-signals at different analysis scales are extracted and constructed as the multi-dimension fault feature vector. In order to address the problem of sensitive parameters for MSVM model, whale optimization algorithm (abbreviated as WOA) is introduced to optimize the penalty factor and kernel function parameters to construct the optimal WOA-MSVM model. Finally, Instance analysis is carried out with bearing fault dataset from Jiangnan University to verify the parameters influence and the effectiveness on the unbalanced sample set. The results show that compared with different feature vector inputs and learning models such as k-Nearest Neighbor (abbreviated as KNN), Decision Tree (abbreviated as DT), Random Forest (RF), etc., the proposed technique can achieve an accuracy rate of 99.33%, besides, the computation speed is fast and the diagnosis efficiency is high which means its potential value for engineering application.
Funder
National High-tech Research and Development Program
National Natural Science Foundation of China
Postdoctoral Research Foundation of China
Natural Science Foundation of Shanghai
Shanghai Engineering Technology Research Center
Publisher
Springer Science and Business Media LLC
Reference31 articles.
1. Chen, F.: Fault feature extraction of rolling element bearings based on short-time processing. J. Vibroeng. 24(2), 14 (2022)
2. Versaci, M., Morabito, F.C.: Fuzzy time series approach for disruption prediction in Tokamak reactors. IEEE Trans. Magn. 39(3), 1503–1506 (2003)
3. Leng, Y., Wang, Z., Yang, H.: A novel approach based on EEMD sample entropy to fault current identification in DC traction network. ETEP-Eur. Trans. Electr. Power 27(10), e23711–e23719 (2017)
4. Li, Y., Fujita, H., Li, J., et al.: Tensor approximate entropy: An entropy measure for sleep scoring. Knowl.-Based Syst. 245, 108503 (2022)
5. Li, Y., Wang, S., Yang, Y., et al.: Multiscale symbolic fuzzy entropy: an entropy denoising method for weak feature extraction of rotating machinery. Mech. Syst. Signal Process. 162(7), 108052 (2022)
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