Learning Neural Operator Surrogates for the Black Hole Accretion Code
Matthias N\"agele, Cedric B\"os, Chester Tan, Christian M. Fromm, Ingo Scholtes, Karl Mannheim

TL;DR
This paper develops neural operator surrogates for complex black hole accretion simulations, enabling faster predictions and capturing key physical phenomena like plasmoid formation and jet evolution.
Contribution
It introduces the first physics-informed neural operator for special relativistic resistive MHD and applies a neural operator directly on adaptive mesh refinement grids in MHD simulations.
Findings
Physics-informed Fourier Neural Operator accurately predicts plasmoid formation.
Transformer Neural Operator captures major features of relativistic jet evolution.
Models outperform data-only baselines in predictive accuracy.
Abstract
General-relativistic magnetohydrodynamic (GR-MHD) simulations are essential for studying black hole accretion, relativistic jets, and magnetic reconnection, yet their computational cost severely limits systematic parameter exploration. We investigate neural operator surrogates for two astrophysically relevant simulation scenarios produced by the Black Hole Accretion Code (\texttt{BHAC}). First, a Physics Informed Fourier Neural Operator (PINO) is trained on the special-relativistic resistive MHD (SRRMHD) evolution of the Orszag-Tang vortex over a range of resistivities spanning the Sweet-Parker and fast reconnection regimes. By embedding the governing equations as an additional loss term evaluated at finer temporal resolution than the available data supervision, the model learns dynamics at time steps where no simulation data is provided, enabling recovery of plasmoid formation that a…
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