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Internal force corrections with machine learning for quantum mechanics/molecular mechanics simulations.

Publication ,  Journal Article
Wu, J; Shen, L; Yang, W
Published in: The Journal of chemical physics
October 2017

Ab initio quantum mechanics/molecular mechanics (QM/MM) molecular dynamics simulation is a useful tool to calculate thermodynamic properties such as potential of mean force for chemical reactions but intensely time consuming. In this paper, we developed a new method using the internal force correction for low-level semiempirical QM/MM molecular dynamics samplings with a predefined reaction coordinate. As a correction term, the internal force was predicted with a machine learning scheme, which provides a sophisticated force field, and added to the atomic forces on the reaction coordinate related atoms at each integration step. We applied this method to two reactions in aqueous solution and reproduced potentials of mean force at the ab initio QM/MM level. The saving in computational cost is about 2 orders of magnitude. The present work reveals great potentials for machine learning in QM/MM simulations to study complex chemical processes.

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Published In

The Journal of chemical physics

DOI

EISSN

1089-7690

ISSN

0021-9606

Publication Date

October 2017

Volume

147

Issue

16

Start / End Page

161732

Related Subject Headings

  • Chemical Physics
  • 51 Physical sciences
  • 40 Engineering
  • 34 Chemical sciences
  • 09 Engineering
  • 03 Chemical Sciences
  • 02 Physical Sciences
 

Citation

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Wu, J., Shen, L., & Yang, W. (2017). Internal force corrections with machine learning for quantum mechanics/molecular mechanics simulations. The Journal of Chemical Physics, 147(16), 161732. https://doi.org/10.1063/1.5006882
Wu, Jingheng, Lin Shen, and Weitao Yang. “Internal force corrections with machine learning for quantum mechanics/molecular mechanics simulations.The Journal of Chemical Physics 147, no. 16 (October 2017): 161732. https://doi.org/10.1063/1.5006882.
Wu J, Shen L, Yang W. Internal force corrections with machine learning for quantum mechanics/molecular mechanics simulations. The Journal of chemical physics. 2017 Oct;147(16):161732.
Wu, Jingheng, et al. “Internal force corrections with machine learning for quantum mechanics/molecular mechanics simulations.The Journal of Chemical Physics, vol. 147, no. 16, Oct. 2017, p. 161732. Epmc, doi:10.1063/1.5006882.
Wu J, Shen L, Yang W. Internal force corrections with machine learning for quantum mechanics/molecular mechanics simulations. The Journal of chemical physics. 2017 Oct;147(16):161732.

Published In

The Journal of chemical physics

DOI

EISSN

1089-7690

ISSN

0021-9606

Publication Date

October 2017

Volume

147

Issue

16

Start / End Page

161732

Related Subject Headings

  • Chemical Physics
  • 51 Physical sciences
  • 40 Engineering
  • 34 Chemical sciences
  • 09 Engineering
  • 03 Chemical Sciences
  • 02 Physical Sciences