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Combining Computational Screening and Machine Learning to Predict Metal–Organic Framework Adsorbents and Membranes for Removing CH(4) or H(2) from Air

Separating and capturing small amounts of CH(4) or H(2) from a mixture of gases, such as coal mine spent air, at a large scale remains a great challenge. We used large-scale computational screening and machine learning (ML) to simulate and explore the adsorption, diffusion, and permeation properties...

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Autores principales: Li, Huilin, Wang, Cuimiao, Zeng, Yue, Li, Dong, Yan, Yaling, Zhu, Xin, Qiao, Zhiwei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9503901/
https://www.ncbi.nlm.nih.gov/pubmed/36135849
http://dx.doi.org/10.3390/membranes12090830
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author Li, Huilin
Wang, Cuimiao
Zeng, Yue
Li, Dong
Yan, Yaling
Zhu, Xin
Qiao, Zhiwei
author_facet Li, Huilin
Wang, Cuimiao
Zeng, Yue
Li, Dong
Yan, Yaling
Zhu, Xin
Qiao, Zhiwei
author_sort Li, Huilin
collection PubMed
description Separating and capturing small amounts of CH(4) or H(2) from a mixture of gases, such as coal mine spent air, at a large scale remains a great challenge. We used large-scale computational screening and machine learning (ML) to simulate and explore the adsorption, diffusion, and permeation properties of 6013 computation-ready experimental metal–organic framework (MOF) adsorbents and MOF membranes (MOFMs) for capturing clean energy gases (CH(4) and H(2)) in air. First, we modeled the relationships between the adsorption and the MOF membrane performance indicators and their characteristic descriptors. Among three ML algorithms, the random forest was found to have the best prediction efficiency for two systems (CH(4)/(O(2) + N(2)) and H(2)/(O(2) + N(2))). Then, the algorithm was further applied to quantitatively analyze the relative importance values of seven MOF descriptors for five performance metrics of the two systems. Furthermore, the 20 best MOFs were also selected. Finally, the commonalities between the high-performance MOFs were analyzed, leading to three types of material design principles: tuned topology, alternative metal nodes, and organic linkers. As a result, this study provides microscopic insights into the capture of trace amounts of CH(4) or H(2) from air for applications involving coal mine spent air and hydrogen leakage.
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spelling pubmed-95039012022-09-24 Combining Computational Screening and Machine Learning to Predict Metal–Organic Framework Adsorbents and Membranes for Removing CH(4) or H(2) from Air Li, Huilin Wang, Cuimiao Zeng, Yue Li, Dong Yan, Yaling Zhu, Xin Qiao, Zhiwei Membranes (Basel) Article Separating and capturing small amounts of CH(4) or H(2) from a mixture of gases, such as coal mine spent air, at a large scale remains a great challenge. We used large-scale computational screening and machine learning (ML) to simulate and explore the adsorption, diffusion, and permeation properties of 6013 computation-ready experimental metal–organic framework (MOF) adsorbents and MOF membranes (MOFMs) for capturing clean energy gases (CH(4) and H(2)) in air. First, we modeled the relationships between the adsorption and the MOF membrane performance indicators and their characteristic descriptors. Among three ML algorithms, the random forest was found to have the best prediction efficiency for two systems (CH(4)/(O(2) + N(2)) and H(2)/(O(2) + N(2))). Then, the algorithm was further applied to quantitatively analyze the relative importance values of seven MOF descriptors for five performance metrics of the two systems. Furthermore, the 20 best MOFs were also selected. Finally, the commonalities between the high-performance MOFs were analyzed, leading to three types of material design principles: tuned topology, alternative metal nodes, and organic linkers. As a result, this study provides microscopic insights into the capture of trace amounts of CH(4) or H(2) from air for applications involving coal mine spent air and hydrogen leakage. MDPI 2022-08-25 /pmc/articles/PMC9503901/ /pubmed/36135849 http://dx.doi.org/10.3390/membranes12090830 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Li, Huilin
Wang, Cuimiao
Zeng, Yue
Li, Dong
Yan, Yaling
Zhu, Xin
Qiao, Zhiwei
Combining Computational Screening and Machine Learning to Predict Metal–Organic Framework Adsorbents and Membranes for Removing CH(4) or H(2) from Air
title Combining Computational Screening and Machine Learning to Predict Metal–Organic Framework Adsorbents and Membranes for Removing CH(4) or H(2) from Air
title_full Combining Computational Screening and Machine Learning to Predict Metal–Organic Framework Adsorbents and Membranes for Removing CH(4) or H(2) from Air
title_fullStr Combining Computational Screening and Machine Learning to Predict Metal–Organic Framework Adsorbents and Membranes for Removing CH(4) or H(2) from Air
title_full_unstemmed Combining Computational Screening and Machine Learning to Predict Metal–Organic Framework Adsorbents and Membranes for Removing CH(4) or H(2) from Air
title_short Combining Computational Screening and Machine Learning to Predict Metal–Organic Framework Adsorbents and Membranes for Removing CH(4) or H(2) from Air
title_sort combining computational screening and machine learning to predict metal–organic framework adsorbents and membranes for removing ch(4) or h(2) from air
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9503901/
https://www.ncbi.nlm.nih.gov/pubmed/36135849
http://dx.doi.org/10.3390/membranes12090830
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