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Search for high-capacity oxygen storage materials by materials informatics

Oxygen storage materials (OSMs), such as pyrochlore type CeO(2)–ZrO(2) (p-CZ), are used as a catalyst support for three-way catalysts in automotive emission control systems. They have oxygen storage capacity (OSC), which is the ability to release and store oxygen reversibly by the fluctuation of cat...

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Autores principales: Ohba, Nobuko, Yokoya, Takuro, Kajita, Seiji, Takechi, Kensuke
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9076568/
https://www.ncbi.nlm.nih.gov/pubmed/35541582
http://dx.doi.org/10.1039/c9ra09886k
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author Ohba, Nobuko
Yokoya, Takuro
Kajita, Seiji
Takechi, Kensuke
author_facet Ohba, Nobuko
Yokoya, Takuro
Kajita, Seiji
Takechi, Kensuke
author_sort Ohba, Nobuko
collection PubMed
description Oxygen storage materials (OSMs), such as pyrochlore type CeO(2)–ZrO(2) (p-CZ), are used as a catalyst support for three-way catalysts in automotive emission control systems. They have oxygen storage capacity (OSC), which is the ability to release and store oxygen reversibly by the fluctuation of cation oxidation states depending on the reducing or oxidizing atmosphere. In this study, we explore high-capacity OSMs by using materials informatics (MI) combining experiments, first-principles calculations, and machine learning (ML). To generate training data for the ML model, the OSC values of 60 metal oxides were measured from the amount of CO(2) produced under alternating flow gas between oxidizing (O(2)) and reducing (CO) conditions at 973, 773, and 573 K. Descriptors were computed by atomic properties and first-principles calculations on each oxide. The support vector machine regression model was trained to predict the OSC at each temperature. The features describing OSC were automatically selected using grid search to achieve practical cross validation performance. The features related to the stability of the oxygen atoms in the crystal and the crystal structure itself such as cohesive energy are highly correlated with OSC. The present model predicts the OSC of 1300 existing oxides. Based on its high predictive power for OSC and synthesizability, we focused on Cu(3)Nb(2)O(8). We synthesized this material and experimentally confirmed that Cu(3)Nb(2)O(8) showed a higher OSC than conventional OSM p-CZ. This MI scheme can significantly accelerate the development of new OSMs.
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spelling pubmed-90765682022-05-09 Search for high-capacity oxygen storage materials by materials informatics Ohba, Nobuko Yokoya, Takuro Kajita, Seiji Takechi, Kensuke RSC Adv Chemistry Oxygen storage materials (OSMs), such as pyrochlore type CeO(2)–ZrO(2) (p-CZ), are used as a catalyst support for three-way catalysts in automotive emission control systems. They have oxygen storage capacity (OSC), which is the ability to release and store oxygen reversibly by the fluctuation of cation oxidation states depending on the reducing or oxidizing atmosphere. In this study, we explore high-capacity OSMs by using materials informatics (MI) combining experiments, first-principles calculations, and machine learning (ML). To generate training data for the ML model, the OSC values of 60 metal oxides were measured from the amount of CO(2) produced under alternating flow gas between oxidizing (O(2)) and reducing (CO) conditions at 973, 773, and 573 K. Descriptors were computed by atomic properties and first-principles calculations on each oxide. The support vector machine regression model was trained to predict the OSC at each temperature. The features describing OSC were automatically selected using grid search to achieve practical cross validation performance. The features related to the stability of the oxygen atoms in the crystal and the crystal structure itself such as cohesive energy are highly correlated with OSC. The present model predicts the OSC of 1300 existing oxides. Based on its high predictive power for OSC and synthesizability, we focused on Cu(3)Nb(2)O(8). We synthesized this material and experimentally confirmed that Cu(3)Nb(2)O(8) showed a higher OSC than conventional OSM p-CZ. This MI scheme can significantly accelerate the development of new OSMs. The Royal Society of Chemistry 2019-12-17 /pmc/articles/PMC9076568/ /pubmed/35541582 http://dx.doi.org/10.1039/c9ra09886k Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by/3.0/
spellingShingle Chemistry
Ohba, Nobuko
Yokoya, Takuro
Kajita, Seiji
Takechi, Kensuke
Search for high-capacity oxygen storage materials by materials informatics
title Search for high-capacity oxygen storage materials by materials informatics
title_full Search for high-capacity oxygen storage materials by materials informatics
title_fullStr Search for high-capacity oxygen storage materials by materials informatics
title_full_unstemmed Search for high-capacity oxygen storage materials by materials informatics
title_short Search for high-capacity oxygen storage materials by materials informatics
title_sort search for high-capacity oxygen storage materials by materials informatics
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9076568/
https://www.ncbi.nlm.nih.gov/pubmed/35541582
http://dx.doi.org/10.1039/c9ra09886k
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