@article{b8c14ff61d6b499682311e9c27fa4ad5,
title = "Semi-local machine-learned kinetic energy density functional with third-order gradients of electron density",
abstract = "A semi-local kinetic energy density functional (KEDF) was constructed based on machine learning (ML). The present scheme adopts electron densities and their gradients up to third-order as the explanatory variables for ML and the Kohn-Sham (KS) kinetic energy density as the response variable in atoms and molecules. Numerical assessments of the present scheme were performed in atomic and molecular systems, including first- and second-period elements. The results of 37 conventional KEDFs with explicit formulae were also compared with those of the ML KEDF with an implicit formula. The inclusion of the higher order gradients reduces the deviation of the total kinetic energies from the KS calculations in a stepwise manner. Furthermore, our scheme with the third-order gradient resulted in the closest kinetic energies to the KS calculations out of the presented functionals.",
author = "Junji Seino and Ryo Kageyama and Mikito Fujinami and Yasuhiro Ikabata and Hiromi Nakai",
note = "Funding Information: Some of the present calculations were performed at the Research Center for Computational Science (RCCS), the Okazaki Research Facilities, and the National Institutes of Natural Sciences (NINS). This study was supported in part by the Ministry of Education, Culture, Sports, Science and Technology (MEXT) program Elements Strategy Initiative to Form Core Research Center (since 2012) and by the Core Research for Evolutional Science and Technology (CREST) Program Theoretical Design of Materials with Innovative Functions Based on Relativistic Electronic Theory of the Japan Science and Technology Agency (JST). One of the authors (J.S.) is grateful to the specific project investigation in the PRESTO Program Advanced Materials Informatics through Comprehensive Integration among Theoretical, Experimental, Computational and Data-Centric Sciences of JST. Publisher Copyright: {\textcopyright} 2018 Author(s).",
year = "2018",
month = jun,
day = "28",
doi = "10.1063/1.5007230",
language = "English",
volume = "148",
journal = "Journal of Chemical Physics",
issn = "0021-9606",
publisher = "American Institute of Physics",
number = "24",
}