Author:
Marani Roberto, ,Perri Anna Gina
Abstract
This paper examines the lock-in thermographic technique for detecting Teflon defects within the composite material with a polymer matrix (Carbon Fiber-reinforced polymers, CFRP). In particular, a deep learning based network, made of a succession of convolutional layers, is implemented to process single thermal sequences generated in a simulation environment. As a result, the proposed methodology can accurately identify subsurface defects. Keywords— Composite materials, lock-in thermography, deep learning, convolutional neural network
Subject
General Earth and Planetary Sciences,General Engineering
Cited by
21 articles.
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