Rolling Bearing Fault Evolution Based on Vibration Time-Domain Parameters

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Abstract:

Fault state is central to the achievement of equipment operation stability and security. On the basis of the analysis of the general process, basic characteristics and evolution of rolling bearing fault formation, according to the uncertainty of rolling bearing fault generation mechanism, highly nonlinear of fault evolution and diversity of fault modes, establishing a rolling bearing fault evolution model based on vibration time domain parameters.

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1412-1418

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May 2016

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© 2016 Trans Tech Publications Ltd. All Rights Reserved

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