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Article Dans Une Revue Phys.Rev.C Année : 2017

Constraints on the nuclear equation of state from nuclear masses and radii in a Thomas-Fermi meta-modeling approach

Résumé

The question of correlations among empirical equation of state (EoS) parameters constrained by nuclear observables is addressed in a Thomas-Fermi meta-modeling approach. A recently proposed meta-modeling for the nuclear EoS in nuclear matter is augmented with a single finite size term to produce a minimal unified EoS functional able to describe the smooth part of the nuclear ground state properties. This meta-model can reproduce the predictions of a large variety of models, and interpolate continuously between them. An analytical approximation to the full Thomas-Fermi integrals is further proposed giving a fully analytical meta-model for nuclear masses. The parameter space is sampled and filtered through the constraint of nuclear mass reproduction with Bayesian statistical tools. We show that this simple analytical meta-modeling has a predictive power on masses, radii, and skins comparable to full Hartree-Fock or extended Thomas-Fermi calculations with realistic energy functionals. The covariance analysis on the posterior distribution shows that no physical correlation is present between the different EoS parameters. Concerning nuclear observables, a strong correlation between the slope of the symmetry energy and the neutron skin is observed, in agreement with previous studies.

Dates et versions

hal-01703856 , version 1 (08-02-2018)

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D. Chatterjee, F. Gulminelli, Ad. R. Raduta, J. Margueron. Constraints on the nuclear equation of state from nuclear masses and radii in a Thomas-Fermi meta-modeling approach. Phys.Rev.C, 2017, 96 (6), pp.065805. ⟨10.1103/PhysRevC.96.065805⟩. ⟨hal-01703856⟩
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