Importance of physical information on the prediction of heavy-ion fusion cross sections with machine learning

Zhilong Li, Zepeng Gao, Ling Liu, Yongjia Wang, Long Zhu, and Qingfeng Li
Phys. Rev. C 109, 024604 – Published 8 February 2024

Abstract

In this work, the Light Gradient Boosting Machine (LightGBM), which is a modern decision tree based machine-learning algorithm, is used to study the fusion cross section (CS) of heavy-ion reaction. Several basic quantities (e.g., mass number and proton number of projectile and target) and the CS obtained from phenomenological formula are fed into the LightGBM algorithm to predict the CS. It is found that, on the validation set, the mean absolute error (MAE) which measures the average magnitude of the absolute difference between log10 of the predicted CS and experimental CS is 0.129 by only using the basic quantities as the input, this value is smaller than 0.154 obtained from the empirical coupled channel model. MAE can be further reduced to 0.08 by including an physical-informed input feature. The MAE on the test set (it consists of 280 data points from 18 reaction systems that not included in the training set) is about 0.19 and 0.53 by including and excluding the physical-informed feature, respectively. We further verify the LightGBM predictions by comparing the CS of Ca40,48+Ni78 obtained from the density-constrained time-dependent Hartree-Fock approach. Our study demonstrates the importance of physical information in predicting fusion cross section of heavy-ion reaction with machine learning.

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  • Received 11 September 2023
  • Accepted 8 December 2023

DOI:https://doi.org/10.1103/PhysRevC.109.024604

©2024 American Physical Society

Physics Subject Headings (PhySH)

Nuclear Physics

Authors & Affiliations

Zhilong Li1,2, Zepeng Gao3, Ling Liu1,*, Yongjia Wang2,†, Long Zhu3, and Qingfeng Li2,4

  • 1College of Physics Science and Technology, Shenyang Normal University, Shenyang 110034, Liaoning, China
  • 2School of Science, Huzhou University, Huzhou 313000, China
  • 3Sino-French Institute of Nuclear Engineering and Technology, Sun Yat-sen University, Zhuhai 519082, China
  • 4Institute of Modern Physics, Chinese Academy of Science, Lanzhou 730000, China

  • *Corresponding author: liuling@synu.edu.cn
  • Corresponding author: wangyongjia@zjhu.edu.cn

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Issue

Vol. 109, Iss. 2 — February 2024

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