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"결정그래프 합성곱 인공신경망"

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"결정그래프 합성곱 인공신경망"

Prediction of Material’s Formation Energy Using Crystal Graph Convolutional Neural Network
Hyun-gi Lee, Dong-hwa Seo
J Electr Electron Mater 2022;35(2):134-142.   Published online March 1, 2022
DOI: https://doi.org/10.4313/JKEM.2022.35.2.4
As industry and technology go through advancement, it is hard to search new materials which satisfy various standards through conventional trial-and-error based research methods. Crystal Graph Convolutional Neural Network(CGCNN) is a neural network which uses material’s features as train data, and predicts the material properties(formation energy, bandgap, etc.) much faster than first-principles calculation. This report introduces how to train the CGCNN model which predicts the formation energy using open database. It is anticipated that with a simple programming skill, readers could construct a model using their data and purpose. Developing machine learning model for materials science is going to help researchers who should explore large chemical and structural space to discover materials efficiently.
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