4.5 Article

Predictions of nuclear β-decay half-lives with machine learning and their impact on r-process nucleosynthesis

期刊

PHYSICAL REVIEW C
卷 99, 期 6, 页码 -

出版社

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevC.99.064307

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资金

  1. National Natural Science Foundation of China [11875070, 11675065, 11711540016]
  2. Natural Science Foundation of Anhui Province [1708085QA10]
  3. Open fund for Discipline Construction, Institute of Physical Science and Information Technology, Anhui University
  4. JSPS [18K13549]
  5. JSPS-NSFC Bilateral Program for Joint Research Project on Nuclear mass and life for unravelling mysteries of the r process
  6. RIKEN iTHEMS program

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Nuclear beta decay is a key process to understand the origin of heavy elements in the universe, while the accuracy is far from satisfactory for the predictions of beta-decay half-lives by nuclear models to date. In this work, we pave a novel way to accurately predict beta-decay half-lives with the machine learning based on the Bayesian neural network, in which the known physics has been explicitly embedded, including the ones described by the Fermi theory of beta decay, and the dependence of half-lives on pairing correlations and decay energies. The other potential physics, which is not clear or even missing in nuclear models nowadays, will be learned by the Bayesian neural network. The results well reproduce the experimental data with a very high accuracy and further provide reasonable uncertainty evaluations in half-life predictions. These accurate predictions for half-lives with uncertainties are essential for the r-process simulations.

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