Beyond the proton drip line: Bayesian analysis of proton-emitting nuclei

10/28/2019
by   Léo Neufcourt, et al.
0

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 considered mass predictions based on two models used in astrophysical studies. Quantified predictions were obtained for each model using Bayesian Gaussian processes trained on separation-energy residuals and combined via Bayesian model averaging. We obtained a good agreement between averaged predictions of statistically corrected models and experiment. In particular, we quantified model results for one- and two-proton separation energies and derived probabilities of proton emission. This information enabled us to produce a quantified landscape of proton-rich nuclei. The most promising candidates for two-proton decay studies have been identified. The methodology used in this work has broad applications to model-based extrapolations of various nuclear observables. It also provides a reliable uncertainty quantification of theoretical predictions.

READ FULL TEXT
research
01/16/2020

Quantified limits of the nuclear landscape

The chart of the nuclides is limited by particle drip lines beyond which...
research
01/22/2019

Neutron drip line in the Ca region from Bayesian model averaging

The region of heavy calcium isotopes forms the frontier of experimental ...
research
06/01/2018

Bayesian approach to model-based extrapolation of nuclear observables

The mass, or binding energy, is the basis property of the atomic nucleus...
research
06/17/2008

Decoding Beta-Decay Systematics: A Global Statistical Model for Beta^- Halflives

Statistical modeling of nuclear data provides a novel approach to nuclea...
research
04/09/2019

Bayesian averaging of computer models with domain discrepancies: a nuclear physics perspective

This article studies Bayesian model averaging (BMA) in the context of se...
research
11/11/2022

An introduction to computational complexity and statistical learning theory applied to nuclear models

The fact that we can build models from data, and therefore refine our mo...
research
08/05/2016

Compartmental analysis of dynamic nuclear medicine data: regularization procedure and application to physiology

Compartmental models based on tracer mass balance are extensively used i...

Please sign up or login with your details

Forgot password? Click here to reset