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Design and Analysis of Metal Oxides for CO(2) Reduction Using Machine Learning, Transfer Learning, and Bayesian Optimization

[Image: see text] We aim to achieve resource recycling by capturing and using CO(2) generated in a chemical production and disposal process. We focused on CO(2) conversion to CO by the reverse water gas shift–chemical looping (RWGS-CL) reaction. This reaction proceeds in two steps (H(2) + MO(x) ⇆ H(...

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Autores principales: Iwama, Ryo, Takizawa, Koji, Shinmei, Kenichi, Baba, Eisuke, Yagihashi, Noritoshi, Kaneko, Hiromasa
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2022
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8973119/
https://www.ncbi.nlm.nih.gov/pubmed/35382317
http://dx.doi.org/10.1021/acsomega.2c00461
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author Iwama, Ryo
Takizawa, Koji
Shinmei, Kenichi
Baba, Eisuke
Yagihashi, Noritoshi
Kaneko, Hiromasa
author_facet Iwama, Ryo
Takizawa, Koji
Shinmei, Kenichi
Baba, Eisuke
Yagihashi, Noritoshi
Kaneko, Hiromasa
author_sort Iwama, Ryo
collection PubMed
description [Image: see text] We aim to achieve resource recycling by capturing and using CO(2) generated in a chemical production and disposal process. We focused on CO(2) conversion to CO by the reverse water gas shift–chemical looping (RWGS-CL) reaction. This reaction proceeds in two steps (H(2) + MO(x) ⇆ H(2)O + MO(x–1); CO(2) + MO(x–1) ⇆ CO + MO(x)) via a metal oxide that acts as an oxygen carrier. High CO(2) conversion can be achieved owing to a low H(2)O concentration in the second step, which causes an unwanted back reaction (H(2) + CO(2) ⇆ CO + H(2)O). However, the RWGS-CL process is difficult to control because of repeated thermochemical redox cycling, and the CO(2) and H(2) conversion extents vary depending on the metal oxide composition and experimental conditions. In this study, we developed metal oxides and simultaneously optimized experimental conditions to satisfy target CO(2) and H(2) conversion extents by using machine learning and Bayesian optimization. We used transfer learning to improve the prediction accuracy of the mathematical models by incorporating a data set and knowledge of oxygen vacancy formation energy. Furthermore, we analyzed the RWGS-CL reaction based on the prediction accuracy of each variable and the feature importance of the random forest regression model.
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spelling pubmed-89731192022-04-04 Design and Analysis of Metal Oxides for CO(2) Reduction Using Machine Learning, Transfer Learning, and Bayesian Optimization Iwama, Ryo Takizawa, Koji Shinmei, Kenichi Baba, Eisuke Yagihashi, Noritoshi Kaneko, Hiromasa ACS Omega [Image: see text] We aim to achieve resource recycling by capturing and using CO(2) generated in a chemical production and disposal process. We focused on CO(2) conversion to CO by the reverse water gas shift–chemical looping (RWGS-CL) reaction. This reaction proceeds in two steps (H(2) + MO(x) ⇆ H(2)O + MO(x–1); CO(2) + MO(x–1) ⇆ CO + MO(x)) via a metal oxide that acts as an oxygen carrier. High CO(2) conversion can be achieved owing to a low H(2)O concentration in the second step, which causes an unwanted back reaction (H(2) + CO(2) ⇆ CO + H(2)O). However, the RWGS-CL process is difficult to control because of repeated thermochemical redox cycling, and the CO(2) and H(2) conversion extents vary depending on the metal oxide composition and experimental conditions. In this study, we developed metal oxides and simultaneously optimized experimental conditions to satisfy target CO(2) and H(2) conversion extents by using machine learning and Bayesian optimization. We used transfer learning to improve the prediction accuracy of the mathematical models by incorporating a data set and knowledge of oxygen vacancy formation energy. Furthermore, we analyzed the RWGS-CL reaction based on the prediction accuracy of each variable and the feature importance of the random forest regression model. American Chemical Society 2022-03-17 /pmc/articles/PMC8973119/ /pubmed/35382317 http://dx.doi.org/10.1021/acsomega.2c00461 Text en © 2022 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by-nc-nd/4.0/Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Iwama, Ryo
Takizawa, Koji
Shinmei, Kenichi
Baba, Eisuke
Yagihashi, Noritoshi
Kaneko, Hiromasa
Design and Analysis of Metal Oxides for CO(2) Reduction Using Machine Learning, Transfer Learning, and Bayesian Optimization
title Design and Analysis of Metal Oxides for CO(2) Reduction Using Machine Learning, Transfer Learning, and Bayesian Optimization
title_full Design and Analysis of Metal Oxides for CO(2) Reduction Using Machine Learning, Transfer Learning, and Bayesian Optimization
title_fullStr Design and Analysis of Metal Oxides for CO(2) Reduction Using Machine Learning, Transfer Learning, and Bayesian Optimization
title_full_unstemmed Design and Analysis of Metal Oxides for CO(2) Reduction Using Machine Learning, Transfer Learning, and Bayesian Optimization
title_short Design and Analysis of Metal Oxides for CO(2) Reduction Using Machine Learning, Transfer Learning, and Bayesian Optimization
title_sort design and analysis of metal oxides for co(2) reduction using machine learning, transfer learning, and bayesian optimization
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8973119/
https://www.ncbi.nlm.nih.gov/pubmed/35382317
http://dx.doi.org/10.1021/acsomega.2c00461
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