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Weak adhesion detection – enhancing the analysis of vibroacoustic modulation by machine learning
Citation Link: https://doi.org/10.15480/882.3655
Publikationstyp
Journal Article
Publikationsdatum
2021-06-08
Sprache
English
Author
TORE-URI
Enthalten in
Volume
273
Article Number
114233
Citation
Composite Structures 273: 114233 (2021-10-01)
Publisher DOI
Scopus ID
Publisher
Elsevier
Adhesive bonding is a well-established technique for composite materials. Despite advanced surface treatments and preparations, surface contamination and application errors still occur, resulting in localised areas with a reduced adhesion. The dramatic reduction of the bond strength limits the applicability of adhesive bonds and hampers further industrial adaptation. This study aims to detect weak-bonds due to manufacturing errors or contamination by analysing and interpreting the vibroacoustic modulation signals with the aid of machine learning. An ultrasonic signal is introduced into the specimen by a piezoceramic actuator and modulated through a low frequency vibration excited by a servo-hydraulic testing system. Tested samples are single-lap shear specimens, according to ASTM D5868-01, with artificial circular debonding areas introduced as PTFE-films or a release agent contamination. It is shown that an artificial neural network can identify various defects in the bonded joint robustly and is able to predict residual strengths and hence demonstrates great potential for non-destructive testing of adhesive joints.
Schlagworte
Artificial neural networks
Composites
Non-destructive testing
Vibroacoustic modulation
Weak-bonds
MLE@TUHH
DDC Class
600: Technik
Publication version
publishedVersion
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Format
Adobe PDF