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Machine learning for design principles for single atom catalysts towards electrochemical reactions

Tamtaji, Mohsen and Gao, Hanyu and Hossain, Md Delowar and Galligan, Patrick Ryan and Wong, Hoilun and Liu, Zhenjing and Liu, Hongwei and Cai, Yuting and Goddard, William A., III and Luo, Zhengtang (2022) Machine learning for design principles for single atom catalysts towards electrochemical reactions. Journal of Materials Chemistry A, 10 (29). pp. 15309-15331. ISSN 2050-7488. doi:10.1039/d2ta02039d. https://resolver.caltech.edu/CaltechAUTHORS:20220722-769329000

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Abstract

Machine learning (ML) integrated density functional theory (DFT) calculations have recently been used to accelerate the design and discovery of heterogeneous catalysts such as single atom catalysts (SACs) through the establishment of deep structure–activity relationships. This review provides recent progress in the ML-aided rational design of heterogeneous catalysts with the focus on SACs in terms of structure–activity relationships, feature importance analysis, high-throughput screening, stability, and metal–support interactions for electrochemistry. Support vector machine (SVM), random forest regression (RFR), and deep neural networks (DNN) along with atomic properties are mainly used for the design of SACs. The ML results have shown that the number of electrons in the d orbital, oxide formation enthalpy, ionization energy, Bader charge, d-band center, and enthalpy of vaporization are mainly the most important parameters for the defining of the structure–activity relationships for electrochemistry. However, the black-box nature of ML techniques occasionally makes a physical interpretation of descriptors, such as the Bader charge, d-band center, and enthalpy of vaporization, non-trivial. At the current stage, ML application is limited by the lack of a large and high-quality database. Future prospects for the development of a large database and a generalized ML algorithm for SAC design are discussed to give insights for further studies in this field.


Item Type:Article
Related URLs:
URLURL TypeDescription
https://doi.org/10.1039/D2TA02039DDOIArticle
ORCID:
AuthorORCID
Tamtaji, Mohsen0000-0001-9118-5474
Hossain, Md Delowar0000-0003-3440-8306
Goddard, William A., III0000-0003-0097-5716
Luo, Zhengtang0000-0002-5134-9240
Additional Information:© The Royal Society of Chemistry 2022. Received 15th March 2022. Accepted 13th June 2022. This article is part of the themed collection: Journal of Materials Chemistry A Recent Review Articles. Z. L. acknowledges support from the RGC (16304421), Innovation and Technology Commission (ITC-CNERC14SC01), Guangdong Science and Technology Department (Project#: 2020A0505090003), Research Fund of Guangdong-Hong Kong-Macao Joint Laboratory for Intelligent Micro-Nano Optoelectronic Technology (No. 2020B1212030010), IER foundation (HT-JD-CXY-201907), and Shenzhen Special Fund for Central Guiding the Local Science and Technology Development (2021Szvup136). Technical assistance from the Materials Characterization and Preparation Facilities of HKUST is greatly appreciated. W. A. G. acknowledges support from the DOE Liquid Sunlight Alliance (LiSA) (DE-SC0021266) and the US National Science Foundation (NSF CBET-2005250). These authors respectfully declare that there are no conflicts of interest to acknowledge for this research.
Group:Liquid Sunlight Alliance
Funders:
Funding AgencyGrant Number
Research Grants Council of Hong Kong16304421
Innovation and Technology Commission (Hong Kong)ITC-CNERC14SC01
Guangdong Science and Technology Department2020A0505090003
Research Fund of Guangdong-Hong Kong-Macao Joint Laboratory for Intelligent Micro-Nano Optoelectronic Technology2020B1212030010
IER FoundationHT-JD-CXY-201907
Shenzhen Special Fund for Central Guiding the Local Science and Technology Development2021Szvup136
Department of Energy (DOE)DE-SC0021266
NSFCBET-2005250
Other Numbering System:
Other Numbering System NameOther Numbering System ID
WAG1524
Issue or Number:29
DOI:10.1039/d2ta02039d
Record Number:CaltechAUTHORS:20220722-769329000
Persistent URL:https://resolver.caltech.edu/CaltechAUTHORS:20220722-769329000
Official Citation:Machine learning for design principles for single atom catalysts towards electrochemical reactions. J. Mater. Chem. A, 2022,10, 15309-15331; DOI: 10.1039/d2ta02039d
Usage Policy:No commercial reproduction, distribution, display or performance rights in this work are provided.
ID Code:115793
Collection:CaltechAUTHORS
Deposited By: George Porter
Deposited On:26 Jul 2022 17:50
Last Modified:15 Aug 2022 00:01

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