Data underlying the publication: Capturing CO2 under Dry and Humid Conditions: When Does the Parent MOF Outperform the MTV MOF?
DOI:10.4121/9952bbfe-5207-46ac-9d59-544d8e9224c3.v1
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DOI: 10.4121/9952bbfe-5207-46ac-9d59-544d8e9224c3
DOI: 10.4121/9952bbfe-5207-46ac-9d59-544d8e9224c3
Datacite citation style
Huang, Chunyu; Noorian Najafabadi, Seyyed Abbas; Albertsma, Jelco; Rook, Willy; Fischer, Marcus et. al. (2025): Data underlying the publication: Capturing CO2 under Dry and Humid Conditions: When Does the Parent MOF Outperform the MTV MOF?. Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/9952bbfe-5207-46ac-9d59-544d8e9224c3.v1
Other citation styles (APA, Harvard, MLA, Vancouver, Chicago, IEEE) available at Datacite
Dataset
This dataset supports a study investigating the performance of multivariate (MTV) metal–organic frameworks (MOFs) versus their parent MOFs in capturing CO₂ under dry and humid conditions. The research aims to address the challenge of water interference during post-combustion CO₂ capture by comparing MOFs functionalized with amino and methyl groups. Data collected includes PXRD, TGA, IR, XPS, elemental analysis, adsorption data(N2, CO2, H2O, and CO2-H2O competitive adsorption), SEM and 3D-ED.
History
- 2025-09-05 first online, published, posted
Publisher
4TU.ResearchDataFormat
Single component adsorption/.aif, TGA/.txt, PXRD/.xy, competitive adsorption/.xls, ATR-IR/.SPA and .CSV, SEM images/.jpg and .tif, XPS/.xls.Associated peer-reviewed publication
Capturing CO2 under Dry and Humid Conditions: When Does the Parent MOF Outperform the MTV MOF?Funding
- Odour Based Selective Recognition of Veterinary Diseases (grant code NWA.1389.20.123) Dutch Research Council (NWO)
- Hierarchical metal-organic framework@covalent organic framework (MOF@COF) on carbon nanofibers for electrocatalytic CO2 conversion (ENLIVEN) (grant code n101107269) European Union Horizon Europe research and innovation program under the Marie Skodowska-Curie Action
Organizations
TU Delft, Faculty of Applied Sciences, Department of Chemical EngineeringDATA
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