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Novel approach of wavelet analysis for nonlinear ultrasonic measurements and fatigue assessment of jet engine components

Widespread damage in aging aircraft is becoming an increasing concern as both civil and military fleet operators are extending the service lifetime of their aircraft. Metallic components undergoing variable cyclic loadings eventually fatigue and form dislocations as precursors to ultimate failure. I...

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Bibliographic Details
Main Authors: Bunget, Gheorghe, Tilmon, Brevin, Yee, Andrew, Stewart, Dylan, Rogers, James, Webster, Matthew, Farinholt, Kevin, Friedersdorf, Fritz, Pepi, Marc, Ghoshal, Anindya
Format: Conference Proceeding
Language:English
Online Access:Get full text
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Summary:Widespread damage in aging aircraft is becoming an increasing concern as both civil and military fleet operators are extending the service lifetime of their aircraft. Metallic components undergoing variable cyclic loadings eventually fatigue and form dislocations as precursors to ultimate failure. In order to characterize the progression of fatigue damage precursors (DP), the acoustic nonlinearity parameter is measured as the primary indicator. However, using proven standard ultrasonic technology for nonlinear measurements presents limitations for settings outside of the laboratory environment. This paper presents an approach for ultrasonic inspection through automated immersion scanning of hot section engine components where mature ultrasonic technology is used during periodic inspections. Nonlinear ultrasonic measurements were analyzed using wavelet analysis to extract multiple harmonics from the received signals. Measurements indicated strong correlations of nonlinearity coefficients and levels of fatigue in aluminum and Ni-based superalloys. This novel wavelet cross-correlation (WCC) algorithm is a potential technique to scan for fatigue damage precursors and identify critical locations for remaining life prediction.
ISSN:0094-243X
1551-7616
DOI:10.1063/1.5031555