Bearing fault analysis using kurtosis and wavelet based multi-scale pca

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Abstract

The vibration signal monitoring that is being generated by a rotor supported by a rolling element bearing is becoming important to define reliability of rotary machine. It is most prudent and useful method for bearing fault detection. Recently, there has been a lot of research on rolling element bearings fault. The kurtosis is most vital parameter to find inner race fault and outer race fault. It is enhanced by a proper selection of variable frame sizes and decompositions levels using wavelet based multi-scale principal component analysis (WMSPCA). It is observed that the kurtosis changes significantly as compared to the actual kurtosis of the un-decomposed faulty signals by proper selection of frame size and decompositions level.

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APA

Jahagirdar, A. C., Mohanty, S., & Gupta, K. K. (2019). Bearing fault analysis using kurtosis and wavelet based multi-scale pca. In Vibroengineering Procedia (Vol. 22, pp. 36–40). EXTRICA. https://doi.org/10.21595/vp.2019.20560

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