화학공학소재연구정보센터
학회 한국화학공학회
학술대회 2019년 가을 (10/23 ~ 10/25, 대전컨벤션센터)
권호 25권 2호, p.2192
발표분야 Application Studies of Multiscale Molecular Modeling and Simulation in Sustainable Chemistry and Eng
제목 기계학습을 통한 고체화학 물질공간 탐색 Exploring solid-state chemical space by machine learning
초록 Discovery of a new material with desired properties is the ultimate goal of materials research. To date, a generally successful strategy has been to use chemical intuition and empirical rules to design new materials, but these conventional approaches require a significant amount of time and cost due to almost unlimited combinatorial possibilities of inorganic materials to explore in chemical space. A promising way to significantly accelerate the latter process is to incorporate all available knowledge and data to plan the synthesis of the next material. In this talk, I will present a few initial frameworks we have developed along this line to perform machine-learned density functional calculations, to predict the properties of a material using simple representations, and to generate new materials for a target property using materials deep generative model.
저자 정유성1, 노주환2, 구근호1, 김성원2, 임주형1, 김주환2
소속 1Department of Chemical and Biomolecular Engineering, 2KAIST
키워드 기계학습; 소재역설계; 생성모델; 무기소재; 물성예측; DFT계산
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