Machine Learning-Driven Discovery of Metal-Organic Frameworks for Efficient CO2 Capture in Humid Condition

  • Zhang, Xiangyu
  • Zhang, Kexin
  • Yoo, Hyeonsuk
  • Lee, Yongjin
Citations

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초록

This paper presents a computational study to design tailor-made metal-organic frameworks (MOFs) for efficient CO2 capture in humid conditions. Target-specific MOFs were generated in our computational platform incorporating the Monte Carlo tree search and recurrent neural networks according to the objective function values that combine three requirements of high adsorption performance, experimental accessibility of designed materials, and good hydrophobicity (i.e., the low Henry coefficient of water in pore space) to be applied in humid conditions. With a given input of 27 different combinations of metal node and topology net information extracted from experimental MOFs, our approach successfully designed promising and novel metal-organic frameworks for CO2 capture, satisfying the three requirements in good balance. Furthermore, the detailed analysis of the structure-property relationship identified that moderate D-i (the diameter of the largest included sphere) of 14.18 A and accessible surface area (ASA) of 1750 m(2)/g values are desirable for high-performing MOFs for CO2 capture, which is attributed to the trade-off relationship between good adsorption selectivity (small pore size is desired) and high adsorption capacity (sufficient pore size is necessary).

키워드

metal-organic frameworkrecurrent neural networkMonte Carlo tree searchcarbon captureHIGH DELIVERABLE CAPACITYDESIGNSTABILITYRESISTANTMOFS
제목
Machine Learning-Driven Discovery of Metal-Organic Frameworks for Efficient CO2 Capture in Humid Condition
저자
Zhang, XiangyuZhang, KexinYoo, HyeonsukLee, Yongjin
DOI
10.1021/acssuschemeng.0c08806
발행일
2021-02-22
유형
Article
저널명
ACS Sustainable Chemistry and Engineering
9
7
페이지
2872 ~ 2879