Issue 55, 2022

Achieving vibrational energies of diatomic systems with high quality by machine learning improved DFT method

Abstract

When using ab initio methods to obtain high-quality quantum behavior of molecules, it often involves a lot of trial-and-error work in algorithm design and parameter selection, which requires enormous time and computational resource costs. In the study of vibrational energies of diatomic molecules, we found that starting from a low-precision DFT model and then correcting the errors using the high-dimensional function modeling capabilities of machine learning, one can considerably reduce the computational burden and improve the prediction accuracy. Data-driven machine learning is able to capture subtle physical information that is missing from DFT approaches. The results of 12C16O, 24MgO and Na35Cl show that, compared with CCSD(T)/cc-pV5Z calculation, this work improves the prediction accuracy by more than one order of magnitude, and reduces the computation cost by more than one order of magnitude.

Graphical abstract: Achieving vibrational energies of diatomic systems with high quality by machine learning improved DFT method

Article information

Article type
Paper
Submitted
30 Nov 2022
Accepted
08 Dec 2022
First published
15 Dec 2022
This article is Open Access
Creative Commons BY-NC license

RSC Adv., 2022,12, 35950-35958

Achieving vibrational energies of diatomic systems with high quality by machine learning improved DFT method

Z. Yang, Z. Wan, L. Liu, J. Fu, Q. Fan, F. Xie, Y. Zhang and J. Ma, RSC Adv., 2022, 12, 35950 DOI: 10.1039/D2RA07613F

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