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Advancing CH(4)/H(2) separation with covalent organic frameworks by combining molecular simulations and machine learning

A high-throughput computational screening approach combined with machine learning (ML) was introduced to unlock the potential of both synthesized and hypothetical COFs (hypoCOFs) for adsorption-based CH(4)/H(2) separation. We studied 597 synthesized COFs for adsorption of a CH(4)/H(2) mixture using...

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Autores principales: Aksu, Gokhan Onder, Keskin, Seda
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10335334/
https://www.ncbi.nlm.nih.gov/pubmed/37441278
http://dx.doi.org/10.1039/d3ta02433d
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author Aksu, Gokhan Onder
Keskin, Seda
author_facet Aksu, Gokhan Onder
Keskin, Seda
author_sort Aksu, Gokhan Onder
collection PubMed
description A high-throughput computational screening approach combined with machine learning (ML) was introduced to unlock the potential of both synthesized and hypothetical COFs (hypoCOFs) for adsorption-based CH(4)/H(2) separation. We studied 597 synthesized COFs for adsorption of a CH(4)/H(2) mixture using Grand Canonical Monte Carlo (GCMC) simulations under pressure-swing adsorption (PSA) and vacuum-swing adsorption (VSA) conditions. Based on the simulation results, the CH(4)/H(2) selectivities, CH(4) working capacities, adsorbent performance scores, and regenerabilities of the synthesized COFs were assessed and the structural properties of the top-performing COFs were identified. The hypoCOF database composed of 69 840 materials was then filtered to identify 7737 hypothetical materials having similar structural properties to the top synthesized COFs. These hypothetical COFs were then examined for CH(4)/H(2) separation using molecular simulations and the results showed that the top hypoCOFs have CH(4) selectivities and working capacities in the ranges of 21.9–28.7 (64.7–128.6) and 5.8–7.6 (1.3–3.1) mol kg(−1) under PSA (VSA) conditions, respectively, outperforming the synthesized COFs and metal–organic frameworks (MOFs). ML models were then developed based on the hypoCOF simulation results to accurately predict the CH(4)/H(2) mixture adsorption properties of all remaining hypothetical materials when their structural and chemical properties are fed into the models. These models accurately assessed the CH(4)/H(2) mixture separation performances of any hypoCOF within seconds without performing computationally demanding molecular simulations. The computational approach that we have proposed in this study will provide an accurate and efficient assessment of COF materials for CH(4)/H(2) separation and significantly accelerate the experimental efforts towards the design and discovery of new high-performing COF adsorbents.
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spelling pubmed-103353342023-07-12 Advancing CH(4)/H(2) separation with covalent organic frameworks by combining molecular simulations and machine learning Aksu, Gokhan Onder Keskin, Seda J Mater Chem A Mater Chemistry A high-throughput computational screening approach combined with machine learning (ML) was introduced to unlock the potential of both synthesized and hypothetical COFs (hypoCOFs) for adsorption-based CH(4)/H(2) separation. We studied 597 synthesized COFs for adsorption of a CH(4)/H(2) mixture using Grand Canonical Monte Carlo (GCMC) simulations under pressure-swing adsorption (PSA) and vacuum-swing adsorption (VSA) conditions. Based on the simulation results, the CH(4)/H(2) selectivities, CH(4) working capacities, adsorbent performance scores, and regenerabilities of the synthesized COFs were assessed and the structural properties of the top-performing COFs were identified. The hypoCOF database composed of 69 840 materials was then filtered to identify 7737 hypothetical materials having similar structural properties to the top synthesized COFs. These hypothetical COFs were then examined for CH(4)/H(2) separation using molecular simulations and the results showed that the top hypoCOFs have CH(4) selectivities and working capacities in the ranges of 21.9–28.7 (64.7–128.6) and 5.8–7.6 (1.3–3.1) mol kg(−1) under PSA (VSA) conditions, respectively, outperforming the synthesized COFs and metal–organic frameworks (MOFs). ML models were then developed based on the hypoCOF simulation results to accurately predict the CH(4)/H(2) mixture adsorption properties of all remaining hypothetical materials when their structural and chemical properties are fed into the models. These models accurately assessed the CH(4)/H(2) mixture separation performances of any hypoCOF within seconds without performing computationally demanding molecular simulations. The computational approach that we have proposed in this study will provide an accurate and efficient assessment of COF materials for CH(4)/H(2) separation and significantly accelerate the experimental efforts towards the design and discovery of new high-performing COF adsorbents. The Royal Society of Chemistry 2023-06-23 /pmc/articles/PMC10335334/ /pubmed/37441278 http://dx.doi.org/10.1039/d3ta02433d Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by-nc/3.0/
spellingShingle Chemistry
Aksu, Gokhan Onder
Keskin, Seda
Advancing CH(4)/H(2) separation with covalent organic frameworks by combining molecular simulations and machine learning
title Advancing CH(4)/H(2) separation with covalent organic frameworks by combining molecular simulations and machine learning
title_full Advancing CH(4)/H(2) separation with covalent organic frameworks by combining molecular simulations and machine learning
title_fullStr Advancing CH(4)/H(2) separation with covalent organic frameworks by combining molecular simulations and machine learning
title_full_unstemmed Advancing CH(4)/H(2) separation with covalent organic frameworks by combining molecular simulations and machine learning
title_short Advancing CH(4)/H(2) separation with covalent organic frameworks by combining molecular simulations and machine learning
title_sort advancing ch(4)/h(2) separation with covalent organic frameworks by combining molecular simulations and machine learning
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10335334/
https://www.ncbi.nlm.nih.gov/pubmed/37441278
http://dx.doi.org/10.1039/d3ta02433d
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