
TL;DR
This paper explores how AI techniques like physics-informed neural networks and neural operators can help simulate complex magnetohydrodynamics phenomena beyond current computational limits.
Contribution
It reviews recent AI-based methods and proposes integrating physics-informed AI with traditional solvers to extend simulation capabilities in MHD.
Findings
AI methods can learn solution operators for MHD problems
Hybrid frameworks recover broadband turbulent spectra
Physics-informed AI can bridge the gap to astrophysical regimes
Abstract
Magnetohydrodynamics (MHD) couples the Navier--Stokes and Maxwell equations into a nonlinear system of partial differential equations governing stellar interiors, astrophysical jets, fusion plasmas, and space weather. Numerical advances, including finite-volume Godunov schemes, constrained-transport algorithms, high-order spectral-element and discontinuous-Galerkin discretisations, and adaptive mesh refinement, have made MHD a predictive tool for solar eruptions, tokamak confinement, and magnetised turbulence. A fundamental barrier nevertheless remains. In three-dimensional MHD turbulence, the degrees of freedom required to resolve all active scales grow as or faster, where is the Reynolds number. Direct numerical simulation is therefore intractable at astrophysical and fusion-relevant parameters, particularly when the Lundquist number …
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