Structural health monitoring for woven fabric CFRP laminates

Structural health monitoring is directly linked to structural performance, hence it is one of the main parameters in the safety of operation. This paper presents the development of an innovative structural health monitoring system for woven fabric carbon fibre reinforced polymer (CFRP) laminates fab...

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Veröffentlicht in:Composites. Part B, Engineering Engineering, 2019-10, Vol.174, p.107048, Article 107048
Hauptverfasser: Alsaadi, A., Meredith, J., Swait, T., Curiel-Sosa, J.L., Jia, Yu, Hayes, S.
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Sprache:eng
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Zusammenfassung:Structural health monitoring is directly linked to structural performance, hence it is one of the main parameters in the safety of operation. This paper presents the development of an innovative structural health monitoring system for woven fabric carbon fibre reinforced polymer (CFRP) laminates fabricated using both vacuum assisted resin transfer moulding and pre-preg technique. The sensing system combines the ability to monitor strain due to applied loads, as well as to detect, and assess damage due to low velocity impact events. Bending loads were applied on a beam-type specimen and changes in electrical resistance, due to piezoresistivity of carbon fibres, were monitored. The change in electrical resistance was a function of applied load and reversible up to 0.13% strain. Two thicknesses of composite panel, 2.09 (vacuum assisted resin transfer moulding) and 1.63mm (pre-preg) were made, and were subjected to a range of low velocity impact energies. The resultant damage areas, as measured using ultrasonic C-scanning, were plotted against changes in electrical resistance to provide a correlation plot of damage area against impact energy. An inverse analysis, using this correlation plot, was performed to predict the damage area from a known impact event. 85% accuracy in the predicted damage area was achieved in comparison with subsequent C-scan data on the unknown damage.
ISSN:1359-8368
DOI:10.1016/j.compositesb.2019.107048