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Accurate prediction of global-density-dependent range-separation parameters based on machine learning.

Authors :
Villot, Corentin
Huang, Tong
Lao, Ka Un
Source :
Journal of Chemical Physics. 7/28/2023, Vol. 159 Issue 4, p1-12. 12p.
Publication Year :
2023

Abstract

In this work, we develop an accurate and efficient XGBoost machine learning model for predicting the global-density-dependent range-separation parameter, ωGDD, for long-range corrected functional (LRC)-ωPBE. This ω GDD ML model has been built using a wide range of systems (11 466 complexes, ten different elements, and up to 139 heavy atoms) with fingerprints for the local atomic environment and histograms of distances for the long-range atomic correlation for mapping the quantum mechanical range-separation values. The promising performance on the testing set with 7046 complexes shows a mean absolute error of 0.001 117 a 0 − 1 and only five systems (0.07%) with an absolute error larger than 0.01 a 0 − 1 , which indicates the good transferability of our ω GDD ML model. In addition, the only required input to obtain ω GDD ML is the Cartesian coordinates without electronic structure calculations, thereby enabling rapid predictions. LRC-ωPBE ( ω GDD ML ) is used to predict polarizabilities for a series of oligomers, where polarizabilities are sensitive to the asymptotic density decay and are crucial in a variety of applications, including the calculations of dispersion corrections and refractive index, and surpasses the performance of all other popular density functionals except for the non-tuned LRC-ωPBE. Finally, LRC-ωPBE ( ω GDD ML ) combined with (extended) symmetry-adapted perturbation theory is used in calculating noncovalent interactions to further show that the traditional ab initio system-specific tuning procedure can be bypassed. The present study not only provides an accurate and efficient way to determine the range-separation parameter for LRC-ωPBE but also shows the synergistic benefits of fusing the power of physically inspired density functional LRC-ωPBE and the data-driven ω GDD ML model. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00219606
Volume :
159
Issue :
4
Database :
Academic Search Index
Journal :
Journal of Chemical Physics
Publication Type :
Academic Journal
Accession number :
169709104
Full Text :
https://doi.org/10.1063/5.0157340