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Abstract:
Due to strong noise in vibration signals of rolling mills, it is very difficult to identify their fault location and to extract their feature. For incipient faults, the spectrum analysis is not effective. Using the band pass filtering feature of wavelet transformation, the signal can be decomposed in the specific frequency band. Furthermore, the single level reconstruction of the decomposed signals can separate the valuable components from the noise successfully. At the same time, the global reconstruction after processing the high frequency decomposing coefficients can realize the same goal. The signal processing results for the vibration signal of bearings of a rolling mill after using several kinds of denoising technology show that the low frequency information containing fault features is extracted, and the characteristic frequency of incipient faults can be captured from the frequency spectrum of the denoised signal. The proposed method can improve accuracy of fault diagnosis decomposing.
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Journal of Vibration and Shock
ISSN: 1000-3835
Year: 2007
Issue: 5
Volume: 26
Page: 71-73,103
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WoS CC Cited Count: 0
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 10
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