您当前的位置: > 详细浏览

RSFNO: A Fourier Neural Operator–Based Solver for High-Dimensional Neutron Transport Equations

请选择邀稿期刊:
摘要: This work establishes the theoretical foundations and practical implementation of a Fourier Neural Operator-based solver for high-dimensional neutron transport equations. We leverage the operator-learning framework to approximate the solution operator of the Boltzmann equation, allowing for efficient representations of reactor-scale neutron flux. RSFNO integrates stochastic geometric parameterization with frequency-domain learning to establish a direct end-to-end mapping from shielding configurations to flux distributions. Evaluated on a reactor shielding benchmark, the model demonstrates remarkable efficiency: despite being trained on just 800 samples, it reduces the full-domain mean squared error by 58.95\% compared to a strong Unet3D baseline. In deep-penetration regions, its accuracy rivals or exceeds that of a $10^{6}$-particle Monte Carlo (MC) simulation. Crucially, RSFNO completes a full-domain prediction in 11.79~s on a single NVIDIA RTX~4090, achieving an effective $\sim 2795\times$ speedup over the MC baseline. While not yet a replacement for high-fidelity safety analysis, RSFNO offers a reliable, ultra-fast surrogate for the computationally expensive deterministic steps in hybrid variance-reduction workflows (e.g., CADIS). These results highlight the promise of Fourier-operator-based solvers in accelerating large-scale transport analysis and enabling scalable, data-driven reactor shielding design.

版本历史

[V1] 2026-02-03 23:32:03 ChinaXiv:202602.00209V1 下载全文
点击下载全文
预览
同行评议状态
待评议
许可声明
metrics指标
  •  点击量1786
  •  下载量727
评论
分享
申请专家评阅