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Unravelling the Impact of Metal Dopants and Oxygen Vacancies on Syngas Conversion over Oxides: A Machine Learning-Accelerated Study of CO Activation on Cr-Doped ZnO Surfaces

[Image: see text] As a critical component of the OX–ZEO composite catalysts toward syngas conversion, the Cr-doped ZnO ternary system can be considered as a model system for understanding oxide catalysts. However, due to the complexity of its structures, traditional approaches, both experimental and...

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Autores principales: Han, Yulan, Xu, Jiayan, Xie, Wenbo, Wang, Zhuozheng, Hu, P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2023
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10660660/
https://www.ncbi.nlm.nih.gov/pubmed/38026819
http://dx.doi.org/10.1021/acscatal.3c03648
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author Han, Yulan
Xu, Jiayan
Xie, Wenbo
Wang, Zhuozheng
Hu, P.
author_facet Han, Yulan
Xu, Jiayan
Xie, Wenbo
Wang, Zhuozheng
Hu, P.
author_sort Han, Yulan
collection PubMed
description [Image: see text] As a critical component of the OX–ZEO composite catalysts toward syngas conversion, the Cr-doped ZnO ternary system can be considered as a model system for understanding oxide catalysts. However, due to the complexity of its structures, traditional approaches, both experimental and theoretical, encounter significant challenges. Herein, we employ machine learning-accelerated methods, including grand canonical Monte Carlo and genetic algorithm, to explore the ZnO(1010) surface with various Cr and oxygen vacancy (OV) concentrations. Stable surfaces with varied Cr and OV concentrations were then systematically investigated to examine their influence on the CO activation via density functional theory calculations. We observe that Cr tends to preferentially appear on the surface of ZnO(1010) rather than in its interior regions and Cr-doped structures incline to form rectangular islands along the [0001] direction at high Cr and OV concentrations. Additionally, detailed calculations of CO reactivity unveil an inverse relationship between the reaction barrier (E(a)) for C–O bond dissociation and the Cr and OV concentrations, and a linear relationship is observed between OV formation energy and E(a) for CO activation. Further analyses indicate that the C–O bond dissociation is much more favored when the adjacent OVs are geometrically aligned in the [1210] direction, and Cr is doped around the reactive sites. These findings provide a deeper insight into CO activation over the Cr-doped ZnO surface and offer valuable guidance for the rational design of effective catalysts for syngas conversion.
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spelling pubmed-106606602023-11-21 Unravelling the Impact of Metal Dopants and Oxygen Vacancies on Syngas Conversion over Oxides: A Machine Learning-Accelerated Study of CO Activation on Cr-Doped ZnO Surfaces Han, Yulan Xu, Jiayan Xie, Wenbo Wang, Zhuozheng Hu, P. ACS Catal [Image: see text] As a critical component of the OX–ZEO composite catalysts toward syngas conversion, the Cr-doped ZnO ternary system can be considered as a model system for understanding oxide catalysts. However, due to the complexity of its structures, traditional approaches, both experimental and theoretical, encounter significant challenges. Herein, we employ machine learning-accelerated methods, including grand canonical Monte Carlo and genetic algorithm, to explore the ZnO(1010) surface with various Cr and oxygen vacancy (OV) concentrations. Stable surfaces with varied Cr and OV concentrations were then systematically investigated to examine their influence on the CO activation via density functional theory calculations. We observe that Cr tends to preferentially appear on the surface of ZnO(1010) rather than in its interior regions and Cr-doped structures incline to form rectangular islands along the [0001] direction at high Cr and OV concentrations. Additionally, detailed calculations of CO reactivity unveil an inverse relationship between the reaction barrier (E(a)) for C–O bond dissociation and the Cr and OV concentrations, and a linear relationship is observed between OV formation energy and E(a) for CO activation. Further analyses indicate that the C–O bond dissociation is much more favored when the adjacent OVs are geometrically aligned in the [1210] direction, and Cr is doped around the reactive sites. These findings provide a deeper insight into CO activation over the Cr-doped ZnO surface and offer valuable guidance for the rational design of effective catalysts for syngas conversion. American Chemical Society 2023-11-08 /pmc/articles/PMC10660660/ /pubmed/38026819 http://dx.doi.org/10.1021/acscatal.3c03648 Text en © 2023 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by/4.0/Permits the broadest form of re-use including for commercial purposes, provided that author attribution and integrity are maintained (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Han, Yulan
Xu, Jiayan
Xie, Wenbo
Wang, Zhuozheng
Hu, P.
Unravelling the Impact of Metal Dopants and Oxygen Vacancies on Syngas Conversion over Oxides: A Machine Learning-Accelerated Study of CO Activation on Cr-Doped ZnO Surfaces
title Unravelling the Impact of Metal Dopants and Oxygen Vacancies on Syngas Conversion over Oxides: A Machine Learning-Accelerated Study of CO Activation on Cr-Doped ZnO Surfaces
title_full Unravelling the Impact of Metal Dopants and Oxygen Vacancies on Syngas Conversion over Oxides: A Machine Learning-Accelerated Study of CO Activation on Cr-Doped ZnO Surfaces
title_fullStr Unravelling the Impact of Metal Dopants and Oxygen Vacancies on Syngas Conversion over Oxides: A Machine Learning-Accelerated Study of CO Activation on Cr-Doped ZnO Surfaces
title_full_unstemmed Unravelling the Impact of Metal Dopants and Oxygen Vacancies on Syngas Conversion over Oxides: A Machine Learning-Accelerated Study of CO Activation on Cr-Doped ZnO Surfaces
title_short Unravelling the Impact of Metal Dopants and Oxygen Vacancies on Syngas Conversion over Oxides: A Machine Learning-Accelerated Study of CO Activation on Cr-Doped ZnO Surfaces
title_sort unravelling the impact of metal dopants and oxygen vacancies on syngas conversion over oxides: a machine learning-accelerated study of co activation on cr-doped zno surfaces
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10660660/
https://www.ncbi.nlm.nih.gov/pubmed/38026819
http://dx.doi.org/10.1021/acscatal.3c03648
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