Predictions of charge density distributions for nuclei with Z $\geq$ 8
deep neural network (DNN) has been developed to accurately predict nuclear charge density distributions for nuclei with proton numbers $Z \geq 8$. By incorporating essential nuclear structure features, the model achieves a significant improvement in predictive accuracy over conventional methods. The charge density distributions are analyzed using a Fourier-Bessel series expansion, and the DNN is trained on a comprehensive dataset derived from relativistic continuum Hartree-Bogoliubov (RCHB) theory calculations. The model demonstrates exceptional performance, with root-mean-square deviations of 0.0123 fm and 0.0198 fm for charge radii on the training and validation sets, respectivelyremarkably surpassing the precision of the original RCHB calculations. Beyond advancing nuclear physics research, this high-precision model provides critical data for applications in atomic physics, nuclear astrophysics, and related fields.
Wang, Mr. Yun-dong、Shang, Mr. Tian-shuai、Xie, Dr. Hui-hui、u, Mr. Peng Xiang、Li, Dr. Jian、Liang, Prof. Haozhao
Jilin UniversityJilin UniversityJilin University
物理学
Nuclear charge density distributionNuclear charge radiiNuclear charge high-order momenteep neutron network
Wang, Mr. Yun-dong,Shang, Mr. Tian-shuai,Xie, Dr. Hui-hui,u, Mr. Peng Xiang,Li, Dr. Jian,Liang, Prof. Haozhao.Predictions of charge density distributions for nuclei with Z $\geq$ 8[EB/OL].(2025-08-26)[2025-09-06].https://chinaxiv.org/abs/202508.00354.点此复制
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