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Cited 60 time in webofscience Cited 63 time in scopus
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An efficient machine learning approach to establish structure-property linkages SCIE SCOPUS

Title
An efficient machine learning approach to establish structure-property linkages
Authors
Jung, JaimyunYoon, Jae IkPark, Hyung KeunKim, Jin YouKim, Hyoung Seop
Date Issued
2019-01
Publisher
ELSEVIER SCIENCE BV
Abstract
Full-field simulations with synthetic microstructure offer unique opportunities in predicting and understanding the linkage between microstructural variables and properties of a material prior to or in conjunction with experimental efforts. Nevertheless, the computational cost restrains the application of full-field simulations in optimizing materials microstructures or in establishing comprehensive structure-property linkages. To address this issue, we propose the use of machine learning technique, namely Gaussian process regression, with a small number of full-field simulation results to construct structure-property linkages that are accurate over a wide range of microstructures. Furthermore, we demonstrate that with the implementation of expected improvement algorithm, microstructures that exhibit most desirable properties can be identified using even smaller number of full-field simulations.
URI
https://oasis.postech.ac.kr/handle/2014.oak/95334
DOI
10.1016/j.commatsci.2018.09.034
ISSN
0927-0256
Article Type
Article
Citation
COMPUTATIONAL MATERIALS SCIENCE, vol. 156, page. 17 - 25, 2019-01
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김형섭KIM, HYOUNG SEOP
Ferrous & Eco Materials Technology
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