2022
DOI: 10.3390/membranes12070700
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Large-Scale Screening and Machine Learning for Metal–Organic Framework Membranes to Capture CO2 from Flue Gas

Abstract: To combat global warming, as an energy-saving technology, membrane separation can be applied to capture CO2 from flue gas. Metal–organic frameworks (MOFs) with characteristics like high porosity have great potential as membrane materials for gas mixture separation. In this work, through a combination of grand canonical Monte Carlo and molecular dynamics simulations, the permeability of three gases (CO2, N2, and O2) was calculated and estimated in 6013 computation–ready experimental MOF membranes (CoRE–MOFMs). … Show more

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Cited by 13 publications
(3 citation statements)
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“…), and chemical characteristics (e.g., the interaction pattern among different atoms, the charge of active sites, the d-band center of active sites, etc.) (Ghiasi et al, 2019;Burns et al, 2020;Shi et al, 2020;Gupta and Li 2022;Situ et al, 2022). The selection of properties is a subtle but critical task that directly determines the performance of modeling.…”
Section: Technical Backgroundsmentioning
confidence: 99%
“…), and chemical characteristics (e.g., the interaction pattern among different atoms, the charge of active sites, the d-band center of active sites, etc.) (Ghiasi et al, 2019;Burns et al, 2020;Shi et al, 2020;Gupta and Li 2022;Situ et al, 2022). The selection of properties is a subtle but critical task that directly determines the performance of modeling.…”
Section: Technical Backgroundsmentioning
confidence: 99%
“…[65] The success of computationready MOF database prompted its recent expansion, which now includes more than 12 000 structures furthering the investigation of membrane-based separation performances of experimentally reported MOF structures. [80,81] Similarly, a recent effort has led to the creation of a curated CSD MOF subset with more than 60 000 structures that is regularly updated. [15] The introduction of hypothetical MOF databases enabled scrutiny into not yet synthesized MOFs that can elucidate the potential performance gains over the synthesized ones.…”
Section: Current State-of-the-art In Modeling Of Mof Membranesmentioning
confidence: 99%
“…Machine Learning (ML) techniques have been used to model and enhance adsorption processes in various fields such as wastewater treatment for pharmaceutical removal (PRASAD et al, 2023), pollutants in general (ZHANG et al, 2023), and coloration (KOOH et al, 2022); air quality, including carbon dioxide (CO2) capture, which is a highly topical issue (SITU et al, 2022;XIE et al, 2023); heterogeneous catalysis (GHANEKAR; DESHPANDE; GREELEY, 2022); and energy demand (NAIT AMAR et al, 2022).…”
Section: Introductionmentioning
confidence: 99%