Surrogate models for nuclear fusion with parametric Shallow Recurrent Decoder Networks: applications to magnetohydrodynamics
M. Lo Verso, C. Introini, E. Cervi, L. Savoldi, J. N. Kutz, A. Cammi

TL;DR
This paper introduces a neural network-based surrogate model, SHRED, combined with SVD for efficient, accurate reconstruction of complex MHD states in nuclear fusion systems from sparse measurements, enabling real-time applications.
Contribution
It presents a novel data-driven framework combining SVD and SHRED neural networks for fast, accurate MHD state reconstruction from limited sensors, applicable to fusion reactor modeling.
Findings
SHRED accurately reconstructs full MHD states from sparse data.
The method generalizes well to unseen magnetic field intensities.
Sensor placement robustness is demonstrated through ensemble testing.
Abstract
Magnetohydrodynamic (MHD) effects play a key role in the design and operation of nuclear fusion systems, where electrically conducting fluids (such as liquid metals or molten salts in reactor blankets) interact with magnetic fields of varying intensity and orientation, which affect the resulting flow. The numerical resolution of MHD models involves highly nonlinear multiphysics systems of equations and can become computationally expensive, particularly in multi-query, parametric, or real-time contexts. This work investigates a fully data-driven framework for MHD state reconstruction that combines dimensionality reduction via Singular Value Decomposition (SVD) with the SHallow REcurrent Decoder (SHRED), a neural network architecture designed to recover the full spatio-temporal state from sparse time-series measurements of a limited number of observables. The methodology is applied to a…
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Taxonomy
TopicsMagnetic confinement fusion research · Fusion materials and technologies · Model Reduction and Neural Networks
