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Nuclear energy density functionals from machine learning

Xinhui Wu, Z. X. Ren, P. W. Zhao

2022Physical review. C55 citationsDOIOpen Access PDF

Abstract

Machine learning is employed to build an energy density functional for self-bound nuclear systems for the first time. By learning the kinetic energy as a functional of the nucleon density alone, a robust and accurate orbital-free density functional for nuclei is established. Self-consistent calculations that bypass the Kohn-Sham equations provide the ground-state densities, total energies, and root-mean-square radii with a high accuracy in comparison with the Kohn-Sham solutions. No existing orbital-free density functional theory comes close to this performance for nuclei. Therefore, it provides a new promising way for future developments of nuclear energy density functionals for the whole nuclear chart.

Topics & Concepts

Orbital-free density functional theoryDensity functional theoryChartEnergy (signal processing)NucleonPhysicsNuclear structureKinetic energyStatistical physicsHybrid functionalQuantum mechanicsAtomic physicsMathematicsStatisticsNuclear physics research studiesAstronomical and nuclear sciencesAdvanced Chemical Physics Studies
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