Beyond the proton drip line: Bayesian analysis of proton-emitting nuclei
L\'eo Neufcourt, Yuchen Cao, Samuel Giuliani, Witold Nazarewicz, Erik, Olsen, Oleg B. Tarasov

TL;DR
This paper employs Bayesian methods to improve predictions of proton-emitting nuclei beyond the proton drip line, providing quantified uncertainties and identifying promising candidates for decay studies.
Contribution
It introduces a Bayesian framework combining multiple nuclear models with statistical emulators to accurately predict separation energies and proton emission probabilities.
Findings
Good agreement between Bayesian predictions and experimental data
Quantified uncertainties in separation energies and decay probabilities
Identification of promising two-proton decay candidates
Abstract
The limits of the nuclear landscape are determined by nuclear binding energies. Beyond the proton drip lines, where the separation energy becomes negative, there is not enough binding energy to prevent protons from escaping the nucleus. Predicting properties of unstable nuclear states in the vast territory of proton emitters poses an appreciable challenge for nuclear theory as it often involves far extrapolations. In addition, significant discrepancies between nuclear models in the proton-rich territory call for quantified predictions. With the help of Bayesian methodology, we mix a family of nuclear mass models corrected with statistical emulators trained on the experimental mass measurements, in the proton-rich region of the nuclear chart. Separation energies were computed within nuclear density functional theory using several Skyrme and Gogny energy density functionals. We also…
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