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Interpretable Data-Driven Descriptors for Establishing the Structure-Activity Relationship of Metal-Organic Frameworks Toward Oxygen Evolution Reaction.
Zhou, Jian; Xu, Liangliang; Gai, Huiyu; Xu, Ning; Ren, Zhichu; Hou, Xianbiao; Chen, Zongkun; Han, Zhongkang; Sarker, Debalaya; Levchenko, Sergey V; Huang, Minghua.
Affiliation
  • Zhou J; Ocean University of China, School of Materials Science and Engineering, CHINA.
  • Xu L; Korea Advanced Institute of Science and Technology, Department of Chemical and Biomolecular Engineering, KOREA, REPUBLIC OF.
  • Gai H; University of Konstanz, Physical Chemistry, GERMANY.
  • Xu N; Zhejiang University, School of Material Sciences and Engineering, CHINA.
  • Ren Z; Ocean University of China, School of Materials Science and Engineering, CHINA.
  • Hou X; Ocean University of China, School of Materials Science and Engineering, CHINA.
  • Chen Z; University of Konstanz, Physical Chemistry, GERMANY.
  • Han Z; Zhejiang University, School of Materials Science and Engineering, CHINA.
  • Sarker D; UGC DAE Consortium for Scientific Research, university campus, INDIA.
  • Levchenko SV; Independent researcher, Independent researcher, RUSSIAN FEDERATION.
  • Huang M; Ocean University of China, School of Material Sciences and Engineering, Ocean University of China, 266100, Qingdao, CHINA.
Angew Chem Int Ed Engl ; : e202409449, 2024 Jun 12.
Article in En | MEDLINE | ID: mdl-38864513
ABSTRACT
The development of readily accessible and interpretable descriptors is pivotal yet challenging in the rational design of metal-organic framework (MOF) catalysts. This study presents a straightforward and physically interpretable activity descriptor for the oxygen evolution reaction (OER), derived from a dataset of bimetallic Ni-based MOFs. Through an artificial-intelligence (AI) data-mining subgroup discovery (SGD) approach, a combination of the d-band center and number of missing electrons in eg states of Ni, as well as the first ionization energy and number of electrons in eg states of the substituents, is revealed as a gene of a superior OER catalyst. The found descriptor, obtained from the AI analysis of a dataset of MOFs containing 3-5d transition metals and 13 organic linkers, has been demonstrated to facilitate in-depth understanding of structure-activity relationship at the molecular orbital level. The descriptor is validated experimentally for 11 Ni-based MOFs. Combining SGD with physical insights and experimental verification, our work offers a highly efficient approach for screening MOF-based OER catalysts, simultaneously providing comprehensive understanding of the catalytic mechanism.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Angew Chem Int Ed Engl Year: 2024 Document type: Article Affiliation country:

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Angew Chem Int Ed Engl Year: 2024 Document type: Article Affiliation country:
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