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      Parametrization of Nonbonded Force Field Terms for Metal-Organic Frameworks Using Machine Learning Approach.

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          Abstract

          The enormous structural and chemical diversity of metal-organic frameworks (MOFs) forces researchers to actively use simulation techniques as often as experiments. MOFs are widely known for their outstanding adsorption properties, so a precise description of the host-guest interactions is essential for high-throughput screening aimed at ranking the most promising candidates. However, highly accurate ab initio calculations cannot be routinely applied to model thousands of structures due to the demanding computational costs. Furthermore, methods based on force field (FF) parametrization suffer from low transferability. To resolve this accuracy-efficiency dilemma, we applied a machine learning (ML) approach: extreme gradient boosting. The trained models reproduced the atom-in-material quantities, including partial charges, polarizabilities, dispersion coefficients, quantum Drude oscillator, and electron cloud parameters, with accuracy similar to the reference data set. The aforementioned FF precursors make it possible to thoroughly describe noncovalent interactions typical for MOF-adsorbate systems: electrostatic, dispersion, polarization, and short-range repulsion. The presented approach can also readily facilitate hybrid atomistic simulation/ML workflows.

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          Author and article information

          Journal
          J Chem Inf Model
          Journal of chemical information and modeling
          American Chemical Society (ACS)
          1549-960X
          1549-9596
          Dec 27 2021
          : 61
          : 12
          Affiliations
          [1 ] Department of Chemistry, Lomonosov Moscow State University, Moscow 119991, Russia.
          [2 ] Frumkin Institute of Physical Chemistry and Electrochemistry, Russian Academy of Sciences, Moscow 119071, Russia.
          [3 ] Department of Chemical & Materials Engineering, New Mexico State University, Las Cruces, New Mexico 88003-8001, United States.
          Article
          10.1021/acs.jcim.1c01124
          34787430
          a07c9b1d-afc8-4e4d-8521-7bc3a28b8694
          History

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