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Deciphering the Structural and Chemical Transformations of Oxide Catalysts during Oxygen Evolution Reaction Using Quick X-ray Absorption Spectroscopy and Machine Learning

[Image: see text] Bimetallic transition-metal oxides, such as spinel-like Co(x)Fe(3–x)O(4) materials, are known as attractive catalysts for the oxygen evolution reaction (OER) in alkaline electrolytes. Nonetheless, unveiling the real active species and active states in these catalysts remains a chal...

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Autores principales: Timoshenko, Janis, Haase, Felix T., Saddeler, Sascha, Rüscher, Martina, Jeon, Hyo Sang, Herzog, Antonia, Hejral, Uta, Bergmann, Arno, Schulz, Stephan, Roldan Cuenya, Beatriz
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2023
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9951215/
https://www.ncbi.nlm.nih.gov/pubmed/36762901
http://dx.doi.org/10.1021/jacs.2c11824
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author Timoshenko, Janis
Haase, Felix T.
Saddeler, Sascha
Rüscher, Martina
Jeon, Hyo Sang
Herzog, Antonia
Hejral, Uta
Bergmann, Arno
Schulz, Stephan
Roldan Cuenya, Beatriz
author_facet Timoshenko, Janis
Haase, Felix T.
Saddeler, Sascha
Rüscher, Martina
Jeon, Hyo Sang
Herzog, Antonia
Hejral, Uta
Bergmann, Arno
Schulz, Stephan
Roldan Cuenya, Beatriz
author_sort Timoshenko, Janis
collection PubMed
description [Image: see text] Bimetallic transition-metal oxides, such as spinel-like Co(x)Fe(3–x)O(4) materials, are known as attractive catalysts for the oxygen evolution reaction (OER) in alkaline electrolytes. Nonetheless, unveiling the real active species and active states in these catalysts remains a challenge. The coexistence of metal ions in different chemical states and in different chemical environments, including disordered X-ray amorphous phases that all evolve under reaction conditions, hinders the application of common operando techniques. Here, we address this issue by relying on operando quick X-ray absorption fine structure spectroscopy, coupled with unsupervised and supervised machine learning methods. We use principal component analysis to understand the subtle changes in the X-ray absorption near-edge structure spectra and develop an artificial neural network to decipher the extended X-ray absorption fine structure spectra. This allows us to separately track the evolution of tetrahedrally and octahedrally coordinated species and to disentangle the chemical changes and several phase transitions taking place in Co(x)Fe(3–x)O(4) catalysts and on their active surface, related to the conversion of disordered oxides into spinel-like structures, transformation of spinels into active oxyhydroxides, and changes in the degree of spinel inversion in the course of the activation treatment and under OER conditions. By correlating the revealed structural changes with the distinct catalytic activity for a series of Co(x)Fe(3–x)O(4) samples, we elucidate the active species and OER mechanism.
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spelling pubmed-99512152023-02-25 Deciphering the Structural and Chemical Transformations of Oxide Catalysts during Oxygen Evolution Reaction Using Quick X-ray Absorption Spectroscopy and Machine Learning Timoshenko, Janis Haase, Felix T. Saddeler, Sascha Rüscher, Martina Jeon, Hyo Sang Herzog, Antonia Hejral, Uta Bergmann, Arno Schulz, Stephan Roldan Cuenya, Beatriz J Am Chem Soc [Image: see text] Bimetallic transition-metal oxides, such as spinel-like Co(x)Fe(3–x)O(4) materials, are known as attractive catalysts for the oxygen evolution reaction (OER) in alkaline electrolytes. Nonetheless, unveiling the real active species and active states in these catalysts remains a challenge. The coexistence of metal ions in different chemical states and in different chemical environments, including disordered X-ray amorphous phases that all evolve under reaction conditions, hinders the application of common operando techniques. Here, we address this issue by relying on operando quick X-ray absorption fine structure spectroscopy, coupled with unsupervised and supervised machine learning methods. We use principal component analysis to understand the subtle changes in the X-ray absorption near-edge structure spectra and develop an artificial neural network to decipher the extended X-ray absorption fine structure spectra. This allows us to separately track the evolution of tetrahedrally and octahedrally coordinated species and to disentangle the chemical changes and several phase transitions taking place in Co(x)Fe(3–x)O(4) catalysts and on their active surface, related to the conversion of disordered oxides into spinel-like structures, transformation of spinels into active oxyhydroxides, and changes in the degree of spinel inversion in the course of the activation treatment and under OER conditions. By correlating the revealed structural changes with the distinct catalytic activity for a series of Co(x)Fe(3–x)O(4) samples, we elucidate the active species and OER mechanism. American Chemical Society 2023-02-10 /pmc/articles/PMC9951215/ /pubmed/36762901 http://dx.doi.org/10.1021/jacs.2c11824 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 Timoshenko, Janis
Haase, Felix T.
Saddeler, Sascha
Rüscher, Martina
Jeon, Hyo Sang
Herzog, Antonia
Hejral, Uta
Bergmann, Arno
Schulz, Stephan
Roldan Cuenya, Beatriz
Deciphering the Structural and Chemical Transformations of Oxide Catalysts during Oxygen Evolution Reaction Using Quick X-ray Absorption Spectroscopy and Machine Learning
title Deciphering the Structural and Chemical Transformations of Oxide Catalysts during Oxygen Evolution Reaction Using Quick X-ray Absorption Spectroscopy and Machine Learning
title_full Deciphering the Structural and Chemical Transformations of Oxide Catalysts during Oxygen Evolution Reaction Using Quick X-ray Absorption Spectroscopy and Machine Learning
title_fullStr Deciphering the Structural and Chemical Transformations of Oxide Catalysts during Oxygen Evolution Reaction Using Quick X-ray Absorption Spectroscopy and Machine Learning
title_full_unstemmed Deciphering the Structural and Chemical Transformations of Oxide Catalysts during Oxygen Evolution Reaction Using Quick X-ray Absorption Spectroscopy and Machine Learning
title_short Deciphering the Structural and Chemical Transformations of Oxide Catalysts during Oxygen Evolution Reaction Using Quick X-ray Absorption Spectroscopy and Machine Learning
title_sort deciphering the structural and chemical transformations of oxide catalysts during oxygen evolution reaction using quick x-ray absorption spectroscopy and machine learning
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9951215/
https://www.ncbi.nlm.nih.gov/pubmed/36762901
http://dx.doi.org/10.1021/jacs.2c11824
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