Machine learning-guided construction of an analytic kinetic energy functional for orbital free density functional theory
Sergei Manzhos, Johann Luder, Pavlo Golub, Manabu Ihara

TL;DR
This paper develops an interpretable machine learning-guided analytic kinetic energy functional for orbital-free DFT, enabling accurate structure and elastic property predictions for a wide range of materials.
Contribution
It introduces a novel hybrid ML approach to derive an analytic KEF from complex data, bridging machine learning and traditional functional forms.
Findings
Accurately reproduces Kohn-Sham DFT energy-volume curves
Enables reliable structure optimizations and elastic calculations
Demonstrates applicability across diverse materials
Abstract
Machine learning (ML) of kinetic energy functionals (KEF) for orbital-free density functional theory (OF-DFT) holds the promise of addressing an important bottleneck in large-scale ab initio materials modeling where sufficiently accurate analytic KEFs are lacking. However, ML models are not as easily handled as analytic expressions; they need to be provided in the form of algorithms and associated data. Here, we bridge the two approaches and construct an analytic expression for a KEF guided by interpretative machine learning of crystal cell-averaged kinetic energy densities ({\tau}) of several hundred materials. A previously published dataset including multiple phases of 433 unary, binary, and ternary compounds containing Li, Al, Mg, Si, As, Ga, Sb, Na, Sn, P, and In was used for training, including data at the equilibrium geometry as well as strained structures. A hybrid Gaussian…
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Taxonomy
TopicsMachine Learning in Materials Science
MethodsGaussian Process
