Over the past decade, machine learning has been successfully applied in various fields of science. In this study, we employ a deep learning method to analyze a Skyrme energy density functional (Skyrme-EDF), which is a Kohn-Sham type functional commonly used in nuclear physics. Our goal is to construct an orbital-free functional that reproduces the results of the Skyrme-EDF. To this end, we first compute energies and densities of a nucleus with the Skyrme Kohn-Sham + Bardeen-Cooper-Schrieffer method by introducing a set of external fields. Those are then used as training data for deep learning to construct a functional which depends only on the density distribution. Applying this scheme to the ²⁴Mg nucleus with two distinct random external f...
Background: Symmetry restoration and configuration mixing in the spirit of the generator coordinate ...
A microscopic description of nuclear fission represents one of the most challenging problems in nucl...
Predicting the structure of quantum many-body systems from the first principles of quantum mechanics...
Over the past decade, machine learning has been successfully applied in various fields of science. I...
In a recent series of articles, Gebremariam, Bogner, and Duguet derived a microscopically based nucl...
We present the first application of a new approach, proposed in (2016J.Phys.G:Nucl.Part.Phys.4304LT0...
For theoretical nuclear physics to make predictions on nuclei far from stability it is necessary to ...
Orbital-free Density Functional Theory (OF-DFT) has been used when studying atoms, molecules and sol...
A new version of the Barcelona-Catania-Paris energy functional is applied to a study of nuclear mass...
We present the rst application of a new approach, proposed in [Journal of Physics G: Nuclear and Par...
We demonstrate that a committee of deep neural networks is capable of predicting the ground-state an...
Background: Nuclear density functional theory is the only microscopical theory that can be applied t...
To better understand nuclei and the strong nuclear force, it is useful to analyze global nuclear pro...
International audienceWe demonstrate that a committee of deep neural networks is capable of predicti...
Eighty years after its experimental discovery, a description of induced nuclear fission based solely...
Background: Symmetry restoration and configuration mixing in the spirit of the generator coordinate ...
A microscopic description of nuclear fission represents one of the most challenging problems in nucl...
Predicting the structure of quantum many-body systems from the first principles of quantum mechanics...
Over the past decade, machine learning has been successfully applied in various fields of science. I...
In a recent series of articles, Gebremariam, Bogner, and Duguet derived a microscopically based nucl...
We present the first application of a new approach, proposed in (2016J.Phys.G:Nucl.Part.Phys.4304LT0...
For theoretical nuclear physics to make predictions on nuclei far from stability it is necessary to ...
Orbital-free Density Functional Theory (OF-DFT) has been used when studying atoms, molecules and sol...
A new version of the Barcelona-Catania-Paris energy functional is applied to a study of nuclear mass...
We present the rst application of a new approach, proposed in [Journal of Physics G: Nuclear and Par...
We demonstrate that a committee of deep neural networks is capable of predicting the ground-state an...
Background: Nuclear density functional theory is the only microscopical theory that can be applied t...
To better understand nuclei and the strong nuclear force, it is useful to analyze global nuclear pro...
International audienceWe demonstrate that a committee of deep neural networks is capable of predicti...
Eighty years after its experimental discovery, a description of induced nuclear fission based solely...
Background: Symmetry restoration and configuration mixing in the spirit of the generator coordinate ...
A microscopic description of nuclear fission represents one of the most challenging problems in nucl...
Predicting the structure of quantum many-body systems from the first principles of quantum mechanics...