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Active learning with non-ab initio input features toward efficient CO(2) reduction catalysts

In a conventional chemisorption model, the d-band center theory (augmented sometimes with the upper edge of the d-band for improved accuracy) plays a central role in predicting adsorption energies and catalytic activity as a function of the d-band center of solid surfaces, but it requires density fu...

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Autores principales: Noh, Juhwan, Back, Seoin, Kim, Jaehoon, Jung, Yousung
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Royal Society of Chemistry 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5998799/
https://www.ncbi.nlm.nih.gov/pubmed/29997867
http://dx.doi.org/10.1039/c7sc03422a
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author Noh, Juhwan
Back, Seoin
Kim, Jaehoon
Jung, Yousung
author_facet Noh, Juhwan
Back, Seoin
Kim, Jaehoon
Jung, Yousung
author_sort Noh, Juhwan
collection PubMed
description In a conventional chemisorption model, the d-band center theory (augmented sometimes with the upper edge of the d-band for improved accuracy) plays a central role in predicting adsorption energies and catalytic activity as a function of the d-band center of solid surfaces, but it requires density functional calculations that can be quite costly for the purposes of large scale screening of materials. In this work, we propose to use the d-band width of the muffin-tin orbital theory (to account for the local coordination environment) plus electronegativity (to account for adsorbate renormalization) as a simple set of alternative descriptors for chemisorption which do not require ab initio calculations for large-scale first-hand screening. This pair of descriptors is then combined with machine learning methods, namely, neural network (NN) and kernel ridge regression (KRR). We show, for a toy set of 263 alloy systems, that the CO adsorption energy on the (100) facet can be predicted with a mean absolute deviation error of 0.05 eV. We achieved this high accuracy by utilizing an active learning algorithm, without which the accuracy was 0.18 eV. In addition, the results of testing the method with other facets such as (111) terrace and (211) step sites suggest that the present model is also capable of handling different coordination environments effectively. As an example of the practical application of this machine, we identified Cu(3)Y@Cu* as an active and cost-effective electrochemical CO(2) reduction catalyst to produce CO with an overpotential ∼1 V lower than a Au catalyst.
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spelling pubmed-59987992018-07-11 Active learning with non-ab initio input features toward efficient CO(2) reduction catalysts Noh, Juhwan Back, Seoin Kim, Jaehoon Jung, Yousung Chem Sci Chemistry In a conventional chemisorption model, the d-band center theory (augmented sometimes with the upper edge of the d-band for improved accuracy) plays a central role in predicting adsorption energies and catalytic activity as a function of the d-band center of solid surfaces, but it requires density functional calculations that can be quite costly for the purposes of large scale screening of materials. In this work, we propose to use the d-band width of the muffin-tin orbital theory (to account for the local coordination environment) plus electronegativity (to account for adsorbate renormalization) as a simple set of alternative descriptors for chemisorption which do not require ab initio calculations for large-scale first-hand screening. This pair of descriptors is then combined with machine learning methods, namely, neural network (NN) and kernel ridge regression (KRR). We show, for a toy set of 263 alloy systems, that the CO adsorption energy on the (100) facet can be predicted with a mean absolute deviation error of 0.05 eV. We achieved this high accuracy by utilizing an active learning algorithm, without which the accuracy was 0.18 eV. In addition, the results of testing the method with other facets such as (111) terrace and (211) step sites suggest that the present model is also capable of handling different coordination environments effectively. As an example of the practical application of this machine, we identified Cu(3)Y@Cu* as an active and cost-effective electrochemical CO(2) reduction catalyst to produce CO with an overpotential ∼1 V lower than a Au catalyst. Royal Society of Chemistry 2018-04-17 /pmc/articles/PMC5998799/ /pubmed/29997867 http://dx.doi.org/10.1039/c7sc03422a Text en This journal is © The Royal Society of Chemistry 2018 https://creativecommons.org/licenses/by/3.0/This article is freely available. This article is licensed under a Creative Commons Attribution 3.0 Unported Licence (CC BY 3.0)
spellingShingle Chemistry
Noh, Juhwan
Back, Seoin
Kim, Jaehoon
Jung, Yousung
Active learning with non-ab initio input features toward efficient CO(2) reduction catalysts
title Active learning with non-ab initio input features toward efficient CO(2) reduction catalysts
title_full Active learning with non-ab initio input features toward efficient CO(2) reduction catalysts
title_fullStr Active learning with non-ab initio input features toward efficient CO(2) reduction catalysts
title_full_unstemmed Active learning with non-ab initio input features toward efficient CO(2) reduction catalysts
title_short Active learning with non-ab initio input features toward efficient CO(2) reduction catalysts
title_sort active learning with non-ab initio input features toward efficient co(2) reduction catalysts
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5998799/
https://www.ncbi.nlm.nih.gov/pubmed/29997867
http://dx.doi.org/10.1039/c7sc03422a
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AT backseoin activelearningwithnonabinitioinputfeaturestowardefficientco2reductioncatalysts
AT kimjaehoon activelearningwithnonabinitioinputfeaturestowardefficientco2reductioncatalysts
AT jungyousung activelearningwithnonabinitioinputfeaturestowardefficientco2reductioncatalysts