화학공학소재연구정보센터
학회 한국화학공학회
학술대회 2021년 가을 (10/27 ~ 10/29, 광주 김대중컨벤션센터)
권호 27권 2호, p.1931
발표분야 열역학 분자모사
제목 Graph convolution networks for property estimation : improved property estimation and uncertainty analysis
초록 Pure property estimation is essential in chemical process when experimental approach is difficult. Group contribution methods have been held well so far. As computer technology develops over time, more accurate prediction has been possible by using artificial neural networks architecture. However, due to shortage of experimental data, only few papers have been reported the successful predictions of thermodynamic properties with artificial neural networks. In this work, we represent a new method with hybrid stance of group contribution method and molecular graph neural networks for estimation of pure thermodynamic properties: normal boiling point, normal melting point, critical temperature, critical pressure, critical volume, closed-cup flash point, standard enthalpy of fusion, standard enthalpy of formation, standard Gibbs energy of formation. The application of graph convolution networks successfully overcome the isomer discrimination problem, while the concept of group contribution effectively reduced the number of parameters. Moreover, to ensure reliability, uncertainty analysis is held.
저자 황선유, 강정원
소속 고려대
키워드 열역학; 분자모델링 및 전산모사
E-Mail
원문파일 초록 보기