Back to Search Start Over

Deep learning on nuclear mass and $\alpha$ decay half-lives

Authors :
Li, Chen-Qi
Tong, Chao-Nan
Du, Hong-Jing
Pang, Long-Gang
Publication Year :
2022

Abstract

Ab-initio calculations of nuclear masses, the binding energy and the $\alpha$ decay half-lives are intractable for heavy nucleus, because of the curse of dimensionality in many body quantum simulations as proton number($\mathrm{N}$) and neutron number($\mathrm{Z}$) grow. We take advantage of the powerful non-linear transformation and feature representation ability of deep neural network(DNN) to predict the nuclear masses and $\alpha$ decay half-lives. For nuclear binding energy prediction problem we achieve standard deviation $\sigma=0.263$ MeV on 10-fold cross validation on 2149 nuclei. Word-vectors which are high dimensional representation of nuclei from the hidden layers of mass-regression DNN help us to calculate $\alpha$ decay half-lives. For this task, we get $\sigma=0.797$ on 100 times 10-fold cross validation on 350 nuclei on $log_{10}T_{1/2}$ and $\sigma=0.731 $ on 486 nuclei. We also find physical a priori such as shell structure, magic numbers and augmented inputs inspired by Finite Range Droplet Model are important for this small data regression task.<br />Comment: 17 pages

Subjects

Subjects :
Nuclear Theory

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2202.11897
Document Type :
Working Paper
Full Text :
https://doi.org/10.1103/PhysRevC.105.064306