Δ-Machine Learning to Elevate DFT-Based Potentials and a Force Field to the CCSD() Level Illustrated for Ethanol.

J Chem Theory Comput

Department of Chemistry and Cherry L. Emerson Center for Scientific Computation, Emory University, Atlanta, Georgia 30322, United States.

Published: October 2024

AI Article Synopsis

  • Advances in machine learning have led to potentials that combine first-principles accuracy with faster evaluations, specifically using Δ-machine learning to enhance potential energy surfaces (PES) based on low-level methods like DFT.
  • The study showcases successes with various molecules, demonstrating that the approach can achieve near-coupled cluster accuracy while testing its effectiveness using different functionals like PBE and M06 with ethanol as a case study.
  • Results indicate significant optimizations in DFT gradients without needing coupled cluster corrections, and the findings highlight potential applications for improving molecular mechanics force fields.

Article Abstract

Progress in machine learning has facilitated the development of potentials that offer both the accuracy of first-principles techniques and vast increases in the speed of evaluation. Recently, Δ-machine learning has been used to elevate the quality of a potential energy surface (PES) based on low-level, e.g., density functional theory (DFT) energies and gradients to close to the gold-standard coupled cluster level of accuracy. We have demonstrated the success of this approach for molecules, ranging in size from HO to 15-atom acetyl-acetone and tropolone. These were all done using the B3LYP functional. Here, we investigate the generality of this approach for the PBE, M06, M06-2X, and PBE0 + MBD functionals, using ethanol as the example molecule. Linear regression with permutationally invariant polynomials is used to fit both low-level and correction PESs. These PESs are employed for standard RMSE analysis for training and test data sets, and then general fidelity tests such as energetics of stationary points, normal-mode frequencies, and torsional potentials are examined. We achieve similar improvements in all cases. Interestingly, we obtained significant improvement over DFT gradients where coupled cluster gradients were not used to correct the low-level PES. Finally, we present some results for correcting a recent molecular mechanics force field for ethanol and comment on the possible generality of this approach.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11500277PMC
http://dx.doi.org/10.1021/acs.jctc.4c00977DOI Listing

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