2024
DOI: 10.1021/acsami.4c01641
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Rapid and Accurate Screening of the COF Space for Natural Gas Purification: COFInformatics

Gokhan Onder Aksu,
Seda Keskin

Abstract: In this work, we introduced COFInformatics, a computational approach merging molecular simulations and machine learning (ML) algorithms, to evaluate all synthesized and hypothetical covalent organic frameworks (COFs) for the CO 2 /CH 4 mixture separation under four different adsorptionbased processes: pressure swing adsorption (PSA), vacuum swing adsorption (VSA), temperature swing adsorption (TSA), and pressure−temperature swing adsorption (PTSA). We first extracted structural, chemical, energy-based, and gra… Show more

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Cited by 2 publications
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“…It should be noted that in the literature, many studies considered similar lists of features to those that are used in this study. , However, the feature list could involve different features such as atom density, energy histograms, atomic property weighted radial distribution functions (AP-RDFs), revised autocorrelation functions (RACs), etc., which are being increasingly used. Both the features involved and not involved in this study can be used not only for MOFs but also for other porous materials such as covalent–organic frameworks (COFs) and zeolites. It should be noted that, in contrast to this work, some of the studies in the literature involve ML models with more than two features to predict gas adsorption/separation performances. , In those ML models, many different features such as topology, void fraction, functional group density, most positive charge, most negative charge, metal angle, and surface atom density were utilized. Depending on the adsorbates, materials, adsorption conditions, and target values, different features could be the most important feature.…”
Section: Resultsmentioning
confidence: 99%
“…It should be noted that in the literature, many studies considered similar lists of features to those that are used in this study. , However, the feature list could involve different features such as atom density, energy histograms, atomic property weighted radial distribution functions (AP-RDFs), revised autocorrelation functions (RACs), etc., which are being increasingly used. Both the features involved and not involved in this study can be used not only for MOFs but also for other porous materials such as covalent–organic frameworks (COFs) and zeolites. It should be noted that, in contrast to this work, some of the studies in the literature involve ML models with more than two features to predict gas adsorption/separation performances. , In those ML models, many different features such as topology, void fraction, functional group density, most positive charge, most negative charge, metal angle, and surface atom density were utilized. Depending on the adsorbates, materials, adsorption conditions, and target values, different features could be the most important feature.…”
Section: Resultsmentioning
confidence: 99%