Acoustic Signature Based Early Fault Detection in Rolling Element Bearings
Author:
Publisher
Springer International Publishing
Link
http://link.springer.com/content/pdf/10.1007/978-3-319-95711-1_41
Reference20 articles.
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3. Dwyer RF (1984) Use of the Kurtosis statistic in the frequency domain as an aid in detecting random signals. IEEE J Oceanic Eng 9
4. Gu DS, Choi BK (2011) Machinery faults detection using acoustic emission signal—from microdevices to helioseismology. INTECH Open Access Publisher
5. Hariharan V, Srinivasan P (2009) New approach of classification of rolling element bearing fault using artificial neural network. J Mech Eng ME 40:119–130
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