APL Machine Learning (Jun 2024)

Simulating CO2 diffusivity in rigid and flexible Mg-MOF-74 with machine-learning force fields

  • Bowen Zheng,
  • Grace X. Gu,
  • Carine dos Santos,
  • Rodrigo Neumann Barros Ferreira,
  • Mathias Steiner,
  • Binquan Luan

DOI
https://doi.org/10.1063/5.0190372
Journal volume & issue
Vol. 2, no. 2
pp. 026115 – 026115-6

Abstract

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The flexibility of metal–organic frameworks (MOFs) affects their gas adsorption and diffusion properties. However, reliable force fields for simulating flexible MOFs are lacking. As a result, most atomistic simulations so far have been carried out assuming rigid MOFs, which inevitably overestimates the gas adsorption energy. Here, we show that this issue can be addressed by applying a machine-learning potential, trained on quantum chemistry data, to atomistic simulations. We find that inclusion of flexibility is particularly important for simulating CO2 chemisorption in MOFs with coordinatively unsaturated metal sites. Specifically, we demonstrate that the diffusion of CO2 in a flexible Mg-MOF-74 structure is about one order of magnitude faster than in a rigid one, challenging the rigid-MOF assumption in previous simulations.