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정하영

Chung, Hayoung
Computational Structural Mechanics and Design Lab.
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Deep learning aided evaluation for electromechanical properties of complexly structured polymer nanocomposites

Author(s)
Baek, KyungminHwang, TaehyunLee, WonseokChung, HayoungCho, Maenghyo
Issued Date
2022-09
DOI
10.1016/j.compscitech.2022.109661
URI
https://scholarworks.unist.ac.kr/handle/201301/59317
Citation
COMPOSITES SCIENCE AND TECHNOLOGY, v.228, pp.109661
Abstract
In the present work, two types of deep neural networks (DNNs) were employed to establish the structur-e-property relationship of polymer nanocomposites. The trained DNNs based on multiscale analysis results can not only overcome the limitations of the conventional clustering density-based model and multivariate regression models but also exhibit superior performance in evaluating the electromechanical properties of polypropylene matrix composites, wherein spherical SiC nanoparticles were randomly distributed and dispersed. A simple graph convolution network showed better capability than a complex artificial neural network, despite fewer features considered; this implies that the graph convolution network is more appropriate and user-friendly for evaluating the effect of nanoparticle distribution and agglomeration. In addition, the trained graph convolution network can effectively provide mechanical and electrical properties corresponding to large representative volume element (RVE) without a loss of accuracy. The present study demonstrates that deep learning techniques can be put to practical use for the design of next-generation polymer nanocomposite materials.
Publisher
ELSEVIER SCI LTD
ISSN
0266-3538
Keyword (Author)
polymer -matrix composites (PMCs)electro-mechanical behaviourMaterial modelingMultiscale modelingDeep learning -based evaluation
Keyword
ELECTRICAL-CONDUCTIVITYMECHANICAL-BEHAVIORHOMOGENIZATIONNETWORKSMODEL

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