Ab initio carbon capture in open-site metal–organic frameworks

Author:  ["Allison L. Dzubak","Li-Chiang Lin","Jihan Kim","Joseph A. Swisher","Roberta Poloni","Sergey N. Maximoff","Berend Smit","Laura Gagliardi"]

Publication:  Nature Chemistry

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Tags:     Chemistry

Abstract

During the formation of metal–organic frameworks (MOFs), metal centres can coordinate with the intended organic linkers, but also with solvent molecules. In this case, subsequent activation by removal of the solvent molecules creates unsaturated ‘open’ metal sites known to have a strong affinity for CO2 molecules, but their interactions are still poorly understood. Common force fields typically underestimate by as much as two orders of magnitude the adsorption of CO2 in open-site Mg-MOF-74, which has emerged as a promising MOF for CO2 capture. Here we present a systematic procedure to generate force fields using high-level quantum chemical calculations. Monte Carlo simulations based on an ab initio force field generated for CO2 in Mg-MOF-74 shed some light on the interpretation of thermodynamic data from flue gas in this material. The force field describes accurately the chemistry of the open metal sites, and is transferable to other structures. This approach may serve in molecular simulations in general and in the study of fluid–solid interactions. Metal–organic frameworks featuring unsaturated metal sites have emerged as promising materials for CO2 capture, but the host–guest interactions at play have remained poorly understood. An approach based on quantum chemical calculations has now been devised to generate force fields that accurately describe a MOF's metal sites and predict its gas uptake abilities.

Cite this article

Dzubak, A., Lin, LC., Kim, J. et al. Ab initio carbon capture in open-site metal–organic frameworks. Nature Chem 4, 810–816 (2012). https://doi.org/10.1038/nchem.1432

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