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Original Articles

Information Entropy Analysis of Frictional Vibration under Different Wear States

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Pages 88-95 | Received 28 Apr 2021, Accepted 20 Oct 2021, Published online: 07 Dec 2021
 

Abstract

To reveal the chaotic characteristics of friction vibration, pin–plate wear experiments were carried on a wear tester. Different wear states were designed by changing the amount of lubricating oil and distinguished with the friction coefficient. In order to improve the reliability of the collected data, the fictional vibration signals were denoised using an ensemble empirical mode decomposition (EEMD) method. The method of information entropy was proposed to measure the disorder of frequency energy distribution of friction vibration signals. The information entropy of friction vibration decreases in the running-in wear state, fluctuates steadily in the stable wear state, and increases rapidly in the severe wear state. The variation of information entropy of friction vibration signals is closely related to the surface topography of friction pairs. The results indicate that the information entropy of friction vibration can be applied to monitor and recognize the wear state of friction pairs.

Additional information

Funding

This research was funded by the National High Technology Research and Development Program of China (Grant No. 2013AA040203) and the Shanghai Natural Science Foundation (Grant No. 17ZR1412700).

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