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Early Detection of Subsurface Fatigue Cracks in Rolling Element Bearings by the Knowledge-Based Analysis of Acoustic Emission

Abstract

Aiming at early detection of subsurface cracks induced by contact fatigue in rotating machinery, the knowledge-based data analysis algorithm is proposed for health condition monitoring through the analysis of acoustic emission (AE) time series. A robust fault detector is proposed, and its effectiveness was demonstrated for the long-term durability test of a roller made of case-hardened steel. The reliability of subsurface crack detection was proven using independent ultrasonic inspections carried out periodically during the test. Subsurface cracks as small as 0.5 mm were identified, and their steady growth was tracked by the proposed AE technique. Challenges and perspectives of the proposed methodology are unveiled and discussed.
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Category

Academic article

Language

English

Author(s)

  • Einar Løvli Hidle
  • Rune Harald Hestmo
  • Ove Sagen Adsen
  • Hans Iver Lange
  • Alexei Vinogradov

Affiliation

  • SINTEF Industry / Materials and Nanotechnology
  • Norwegian University of Science and Technology
  • Kongsberg Maritime AS
  • Diverse norske bedrifter og organisasjoner

Year

2022

Published in

Sensors

Volume

22

Issue

14

View this publication at Norwegian Research Information Repository