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

机译:用机器学习的核β-腐烂半衰期的预测及其对R-Process核酸合成的影响

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摘要

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.
机译:核β腐烂是理解宇宙中重点起源的关键过程,而准确性远非令人满意的核模型迄今为止核模型预测β腐烂半衰期。 在这项工作中,我们通过基于贝叶斯神经网络的机器学习来铺平了一种新颖的方法来准确地预测β-衰减半衰期,其中已知的物理学已经明确嵌入,包括由β腐烂的费米理论描述的物理学 和半衰期对配对相关性和腐烂能量的依赖性。 现在,其他潜在物理学在北京的核模特中不明确甚至缺失,将由贝叶斯神经网络学习。 结果良好地再现了高精度的实验数据,并在半衰期预测中进一步提供合理的不确定性评估。 对于具有不确定性的半衰期来说,这些准确的预测对于R-Process Simulations至关重要。

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  • 来源
    《Physical review, C》 |2019年第6期|共7页
  • 作者单位

    Anhui Univ Sch Phys &

    Mat Sci Hefei 230601 Anhui Peoples R China;

    RIKEN Nishina Ctr Wako Saitama 3510198 Japan;

    Beihang Univ Sch Phys &

    Nucl Energy Engn Beijing 100191 Peoples R China;

    Lanzhou Univ Sch Nucl Sci &

    Technol Lanzhou 730000 Gansu Peoples R China;

    Lanzhou Univ Sch Nucl Sci &

    Technol Lanzhou 730000 Gansu Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 原子核物理学、高能物理学;
  • 关键词

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