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Novel Bayesian neural network based approach for nuclear charge radii

Xiao-Xu Dong, Rong An, Jun-Xu Lu, Li‐Sheng Geng

2022Physical review. C77 citationsDOIOpen Access PDF

Abstract

Charge radius is one of the most fundamental properties of a nucleus. However, a precise description of the evolution of charge radii along an isotopic chain is highly nontrivial, as reinforced by recent experimental measurements. In this paper, we propose a novel approach which combines a three-parameter formula and a Bayesian neural network. We find that the novel approach can describe the charge radii of all $A\ensuremath{\ge}40$ and $Z\ensuremath{\ge}20$ nuclei with a root-mean-square deviation about 0.015 fm. In particular, the charge radii of the calcium isotopic chain are reproduced very well, including the parabolic behavior and strong odd-even staggerings. We further test the approach for the potassium isotopes and show that it can describe well the experimental data within uncertainties.

Topics & Concepts

Artificial neural networkBayesian probabilityCharge (physics)Computer sciencePhysicsArtificial intelligenceParticle physicsNuclear physics research studiesNuclear reactor physics and engineeringNuclear Physics and Applications
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