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Trustworthy Machine Learning for Damage Identification in Composites A challenging opportunity in structural health monitoring of composite materials is using machine learning (ML) methods to classify acoustic emissions (AE) according to the damage mechanism that emitted the signal. Although a wide variety of ML frameworks have been developed, there is a distinct lack of ground truth datasets which has precluded any direct assessment of their accuracy. Here, we present a novel ground truth dataset gathered on simplified unidirectional SiC/SiC composite structures. Herein, AE is collected from minicomposites which are loaded to targeted percentages of the ultimate tensile stress. These minicomposites are then volumetrically imaged with XCT and individual damage events, along with the mechanism, are correlated to AE. We explore the signal features that allow for mechanism discrimination, along with the feasibility of both unsupervised and supervised frameworks for use in the online monitoring of composite structures.
Document ID
20230008482
Acquisition Source
Glenn Research Center
Document Type
Presentation
Authors
Caelin Muir
(University of California, Santa Barbara Santa Barbara, California, United States)
Samantha Daly
(University of California, Santa Barbara Santa Barbara, California, United States)
Craig Smith
(Glenn Research Center Cleveland, Ohio, United States)
Ashley Hilmas
(United States Air Force Research Laboratory Wright-Patterson AFB, Ohio, United States)
Thao Gibson
(United States Air Force Research Laboratory Wright-Patterson AFB, Ohio, United States)
Nikhil Tulshibagwale
(University of California, Santa Barbara Santa Barbara, California, United States)
Bhavana Swaminathan
(University of California, Santa Barbara Santa Barbara, California, United States)
Andrew Furst
(University of California, Santa Barbara Santa Barbara, California, United States)
Amjad Almansour
(Glenn Research Center Cleveland, Ohio, United States)
Michael Presby
(Glenn Research Center Cleveland, Ohio, United States)
James Kiser
(Glenn Research Center Cleveland, Ohio, United States)
Kathy Sevener
(University of Michigan–Ann Arbor Ann Arbor, Michigan, United States)
Date Acquired
June 1, 2023
Subject Category
Composite Materials
Meeting Information
Meeting: Society for Experimental Mechanics Annual Conference
Location: Orlando, FL
Country: US
Start Date: June 5, 2023
End Date: June 8, 2023
Sponsors: Society for Experimental Mechanics
Funding Number(s)
WBS: 109492.02.03.05.02
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
Single Expert
Keywords
Machine learning, acoustic emission, ceramic matrix composites
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