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Group Contribution-Based Graph Convolution Network: Pure Property Estimation Model

Authors
Hwang, Sun YooKang, Jeong Won
Issue Date
9월-2022
Publisher
SPRINGER/PLENUM PUBLISHERS
Keywords
Artificial neural network; Graph convolution networks; Group contribution method; Machine learning; Thermodynamic property estimation
Citation
INTERNATIONAL JOURNAL OF THERMOPHYSICS, v.43, no.9
Indexed
SCIE
SCOPUS
Journal Title
INTERNATIONAL JOURNAL OF THERMOPHYSICS
Volume
43
Number
9
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/143318
DOI
10.1007/s10765-022-03060-7
ISSN
0195-928X
Abstract
Properties data for chemical compounds are essential information for the design and operation of chemical processes. Experimental values are reported in the literature, but that are too scarce compared with exploding demand for data. When the data are not available, various estimation methods are employed. The group contribution method is one of the standards and simple techniques used today. However, these methods have inherent inaccuracy due to the simplified representation of the molecular structure. More advanced methods are emerging, including improved molecular representations and handling experimental data. However, such processes also suffer from a lack of valid data for adjusting many parameters. We suggest a compromise between a complex machine learning algorithm and a linear group contribution method in this contribution. Instead of representing a molecule using a graph of atoms, we employed bulkier blocks-a graph of functional groups. The new approach dramatically reduced the number of adjustable parameters for machine learning. The result shows higher accuracy than the conventional methods. The whole process was also examined in various aspects-incorporating uncertainties in the data, the robustness of the fitting process, and detecting outlier data. [GRAPHICS] .
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Graduate School of Energy and Environment (KU-KIST GREEN SCHOOL) > Department of Energy and Environment > 1. Journal Articles

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Kang, Jeong Won
공과대학 (화공생명공학과)
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