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Quantum Informed Machine-Learning Potentials for Molecular Dynamics Simulations of CO2’s Chemisorption and Diffusion in Mg-MOF-74

  • Bowen Zheng
  • , Felipe Lopes Oliveira
  • , Rodrigo Neumann Barros Ferreira
  • , Mathias Steiner
  • , Hendrik Hamann
  • , Grace X. Gu
  • , Binquan Luan
  • IBM
  • University of California at Berkeley
  • Universidade Federal do Rio de Janeiro

Research output: Contribution to journalArticlepeer-review

67 Scopus citations

Abstract

Among various porous solids for gas separation and purification, metal-organic frameworks (MOFs) are promising materials that potentially combine high CO2 uptake and CO2/N2 selectivity. So far, within the hundreds of thousands of MOF structures known today, it remains a challenge to computationally identify the best suited species. First principle-based simulations of CO2 adsorption in MOFs would provide the necessary accuracy; however, they are impractical due to the high computational cost. Classical force field-based simulations would be computationally feasible; however, they do not provide sufficient accuracy. Thus, the entropy contribution that requires both accurate force fields and sufficiently long computing time for sampling is difficult to obtain in simulations. Here, we report quantum-informed machine-learning force fields (QMLFFs) for atomistic simulations of CO2 in MOFs. We demonstrate that the method has a much higher computational efficiency (∼1000×) than the first-principle one while maintaining the quantum-level accuracy. As a proof of concept, we show that the QMLFF-based molecular dynamics simulations of CO2 in Mg-MOF-74 can predict the binding free energy landscape and the diffusion coefficient close to experimental values. The combination of machine learning and atomistic simulation helps achieve more accurate and efficient in silico evaluations of the chemisorption and diffusion of gas molecules in MOFs.

Original languageEnglish
Pages (from-to)5579-5587
Number of pages9
JournalACS Nano
Volume17
Issue number6
DOIs
StatePublished - Mar 28 2023

Keywords

  • carbon capture
  • chemisorption
  • classical molecular dynamics
  • density functional theory
  • diffusion
  • machine learning force fields
  • metal−organic framework

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