Impact-induced damage characterization of composite plates using neural networks
Abstract
Impact-induced damage in fiber-reinforced laminated composite plates is characterized. An instrumented impact tower was used to carry out low-velocity impacts on thirteen clamped glass/epoxy composite plates. A range of impact energies was experimentally investigated by progressively varying impactor masses (holding the impact height constant) and varying impact heights (holding the impactor mass constant). The in-plane strain profiles as measured by polyvinylidene fluoride (PVDF) piezoelectric sensors are shown to indicate damage initiation and to correlate to impact energy. Plate damage included matrix cracking, fiber breakage, and delamination. Electronic shearography validated the existence of the impact damage and demonstrated an actual damage area larger than visible indications. The strain profiles that are associated with damage were replicated using an in-house finite element code. Using these simulated strain signatures and the shearography results, a backpropagation artificial neural network (ANN) is shown to detect and classify the type and severity of damage. © IOP Publishing Ltd.
Document Type
Article
DOI
https://doi.org/10.1088/0964-1726/16/2/033
Publication Date
4-1-2007
Recommended Citation
Watkins, Steve E., Farhad Akhavan, Rohit Dua, K. Chandrashekhara, and Donald C. Wunsch. "Impact-induced damage characterization of composite plates using neural networks." Smart Materials and Structures 16, no. 2 (2007): 515.
Journal Title
Smart Materials and Structures