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Deep Neural Networks for Modeling Astrophysical Nuclear Reacting Flows

  • Xiaoyu Zhang
  • , Yuxiao Yi
  • , Lile Wang
  • , Zhi Qin John Xu
  • , Tianhan Zhang
  • , Yao Zhou*
  • *此作品的通讯作者
  • Shanghai Jiao Tong University
  • Peking University
  • Key Laboratory of Precision Opto-Mechatronics Technology (Ministry of Education)

科研成果: 期刊稿件文章同行评审

摘要

In astrophysical simulations, nuclear reacting flows pose computational challenges due to the stiffness of reaction networks. We introduce neural network-based surrogate models using the DeePODE framework to enhance simulation efficiency while maintaining accuracy and robustness. Our method replaces conventional stiff ordinary differential equation (ODE) solvers with deep learning models trained through evolutionary Monte Carlo sampling from zero-dimensional simulation data, ensuring generalization across varied thermonuclear and hydrodynamic conditions. Tested on 3-species and 13-species reaction networks, the models achieve ≲1% accuracy relative to semi-implicit numerical solutions and deliver a ∼2.6× speedup on CPUs. A temperature-thresholded deployment strategy ensures stability in extreme conditions, sustaining neural network utilization above 75% in multidimensional simulations. These data-driven surrogates effectively mitigate stiffness constraints, offering a scalable approach for high-fidelity modeling of astrophysical nuclear reacting flows.

源语言英语
文章编号105
期刊Astrophysical Journal
990
2
DOI
出版状态已出版 - 10 9月 2025

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