Agent Tuning & Optimization 相关度: 5/10

Application of parametric Shallow Recurrent Decoder Network to magnetohydrodynamic flows in liquid metal blankets of fusion reactors

M. Lo Verso, C. Introini, E. Cervi, L. Savoldi, J. N. Kutz, A. Cammi
arXiv: 2604.02139v1 发布: 2026-04-02 更新: 2026-04-02

AI 摘要

利用SHRED网络,从稀疏数据高精度重构核聚变堆液态金属包层中MHD流场的时空状态。

主要贡献

  • 提出基于SHRED的MHD状态重构框架
  • 验证了SHRED在多种磁场配置下的高精度和鲁棒性
  • 证明了SHRED在时变磁场下仅用温度测量推断磁场演化的能力

方法论

结合奇异值分解(SVD)降维与浅层递归解码器(SHRED)神经网络,从稀疏时序数据重构完整时空状态。

原文摘要

Magnetohydrodynamic (MHD) phenomena play a pivotal role in the design and operation of nuclear fusion systems, where electrically conducting fluids (such as liquid metals or molten salts employed in reactor blankets) interact with magnetic fields of varying intensity and orientation, influencing the resulting flow dynamics. The numerical solution of MHD models entails the resolution of highly nonlinear, multiphysics systems of equations, which can become computationally demanding, particularly in multi-query, parametric, or real-time contexts. This study investigates a fully data-driven framework for MHD state reconstruction that integrates dimensionality reduction through Singular Value Decomposition (SVD) with the SHallow REcurrent Decoder (SHRED), a neural network architecture designed to reconstruct the full spatio-temporal state from sparse time-series measurements of selected observables, including previously unseen parametric configurations. The SHRED methodology is applied to a three-dimensional geometry representative of a portion of a WCLL blanket cell, in which lead-lithium flows around a water-cooled tube. Multiple magnetic field configurations are examined, including constant toroidal fields, combined toroidal-poloidal fields, and time-dependent magnetic fields. Across all considered scenarios, SHRED achieves high reconstruction accuracy, robustness, and generalization to magnetic field intensities, orientations, and temporal evolutions not seen during training. Notably, in the presence of time-varying magnetic fields, the model accurately infers the temporal evolution of the magnetic field itself using temperature measurements alone. Overall, the findings identify SHRED as a computationally efficient, data-driven, and flexible approach for MHD state reconstruction, with significant potential for real-time monitoring, diagnostics and control in fusion reactor systems.

标签

MHD 核聚变 液态金属包层 神经网络 状态重构

arXiv 分类

cs.LG