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http://hdl.handle.net/10397/95236
Title: | Accelerating atomic catalyst discovery by theoretical calculations-machine learning strategy | Authors: | Sun, M Dougherty, AW Huang, B Li, Y Yan, CH |
Issue Date: | 24-Mar-2020 | Source: | Advanced energy materials, 24 Mar. 2020, v. 10, no. 12, 1903949 | Abstract: | Atomic catalysts (AC) are emerging as a highly attractive research topic, especially in sustainable energy fields. Lack of a full picture of the hydrogen evolution reaction (HER) impedes the future development of potential electrocatalysts. In this work, the systematic investigation of the HER process in graphdyine (GDY) based AC is presented in terms of the adsorption energies, adsorption trend, electronic structures, reaction pathway, and active sites. This comprehensive work innovatively reveals GDY based AC for HER covering all the transition metals (TM) and lanthanide (Ln) metals, enabling the screening of potential catalysts. The density functional theory (DFT) calculations carefully explore the HER performance beyond the comparison of sole H adsorption. Therefore, the screened catalysts candidates not only match with experimental results but also provide significant references for novel catalysts. Moreover, the machine learning (ML) technique bag-tree approach is innovatively utilized based on the fuzzy model for data separation and converse prediction of the HER performance, which indicates a similar result to the theoretical calculations. From two independent theoretical perspectives (DFT and ML), this work proposes pivotal guidelines for experimental catalyst design and synthesis. The proposed advanced research strategy shows great potential as a general approach in other energy-related areas. | Keywords: | Atomic catalysts Density functional theory Graphdiyne Hydrogen evolution reaction Machine learning |
Publisher: | Wiley-VCH | Journal: | Advanced energy materials | ISSN: | 1614-6832 | EISSN: | 1614-6840 | DOI: | 10.1002/aenm.201903949 | Rights: | © 2020 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim This is the peer reviewed version of the following article: Sun, M., Dougherty, A. W., Huang, B., Li, Y., Yan, C.-H., Accelerating Atomic Catalyst Discovery by Theoretical Calculations-Machine Learning Strategy. Adv. Energy Mater. 2020, 10, 1903949. , which has been published in final form at https://doi.org/10.1002/aenm.201903949. This article may be used for non-commercial purposes in accordance with Wiley Terms and Conditions for Use of Self-Archived Versions. This article may not be enhanced, enriched or otherwise transformed into a derivative work, without express permission from Wiley or by statutory rights under applicable legislation. Copyright notices must not be removed, obscured or modified. The article must be linked to Wiley’s version of record on Wiley Online Library and any embedding, framing or otherwise making available the article or pages thereof by third parties from platforms, services and websites other than Wiley Online Library must be prohibited. |
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