Dynamic fracture of a bicontinuously nanostructured copolymer: A deep
learning analysis of big-data-generating experiment
- URL: http://arxiv.org/abs/2112.01971v1
- Date: Fri, 3 Dec 2021 15:31:59 GMT
- Title: Dynamic fracture of a bicontinuously nanostructured copolymer: A deep
learning analysis of big-data-generating experiment
- Authors: Hanxun Jin, Rodney J. Clifton, Kyung-Suk Kim
- Abstract summary: We report the dynamic fracture toughness as well as the cohesive parameters of a bicontinuously nanostructured copolymer, polyurea, under an extremely high crack-tip loading rate.
For the first time, the dynamic cohesive parameters of polyurea have been successfully obtained by the pre-trained CNN architecture.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Here, we report the dynamic fracture toughness as well as the cohesive
parameters of a bicontinuously nanostructured copolymer, polyurea, under an
extremely high crack-tip loading rate, from a deep-learning analysis of a
dynamic big-data-generating experiment. We first invented a novel Dynamic
Line-Image Shearing Interferometer (DL-ISI), which can generate the
displacement-gradient - time profiles along a line on a sample's back surface
projectively covering the crack initiation and growth process in a single plate
impact experiment. Then, we proposed a convolutional neural network (CNN) based
deep-learning framework that can inversely determine the accurate cohesive
parameters from DL-ISI fringe images. Plate-impact experiments on a polyurea
sample with a mid-plane crack have been performed, and the generated DL-ISI
fringe image has been inpainted by a Conditional Generative Adversarial
Networks (cGAN). For the first time, the dynamic cohesive parameters of
polyurea have been successfully obtained by the pre-trained CNN architecture
with the computational dataset, which is consistent with the correlation method
and the linear fracture mechanics estimation. Apparent dynamic toughening is
found in polyurea, where the cohesive strength is found to be nearly three
times higher than the spall strength under the symmetric impact with the same
impact speed. These experimental results fill the gap in the current
understanding of copolymer's cooperative-failure strength under extreme local
loading conditions near the crack tip. This experiment also demonstrates the
advantages of big-data-generating experiments, which combine innovative
high-throughput experimental techniques with state-of-the-art machine learning
algorithms.
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