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Lin et al., 2004 - Google Patents

Extraction of periodic components for gearbox diagnosis combining wavelet filtering and cyclostationary analysis

Lin et al., 2004

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Document ID
7746851678253526055
Author
Lin J
Zuo M
Publication year
Publication venue
Journal of vibration and acoustics

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Wavelet analysis and cyclostationary analysis have both been employed to detect fault symptoms in gearboxes 1–5. For periodic impulse detection, the Morlet wavelet was employed due to its similarity to an impulse 3. Randall et al. 4 used cyclostationary analysis …
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