Learning Neural Operator Surrogates for the Black Hole Accretion Code

arXiv cs.LG / 4/30/2026

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Key Points

  • The paper proposes neural operator surrogates to reduce the high computational cost of GR-MHD simulations for black hole accretion, relativistic jets, and magnetic reconnection while enabling broader parameter exploration.
  • It trains a Physics Informed Fourier Neural Operator (PINO) on SRRMHD evolution data (Orszag–Tang vortex) across resistivities from Sweet–Parker to fast reconnection, using equation-based losses at finer time resolution to better reproduce plasmoid formation than a data-only baseline.
  • The authors also train an OFormer-style Transformer Neural Operator for spine–sheath relativistic jets produced by BHAC, applying the model directly to an adaptive mesh to handle long sequences via linear attention.
  • They report that the surrogate captures most major jet dynamics details, particularly in early predictions, and claim novelty in applying neural operators to both special relativistic resistive MHD and high-resolution adaptive mesh refinement grids for MHD.
  • Overall, the work demonstrates that physics-informed and mesh-aware neural operator approaches can improve fidelity in regimes where sparse simulation snapshots would otherwise miss key phenomena.
  • The study is presented as an arXiv preprint (v1) announcement, positioning the contributions as methodological advances rather than an established deployment in production workflows.

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 data-only baseline trained on the same sparse snapshots fails to reproduce. To our knowledge, the present work is the first application of a physics informed neural operator to special relativistic resistive MHD, and the first to investigate the capability of such models to resolve plasmoid formation in SRRMHD. In a second line of investigation, an OFormer-style Transformer Neural Operator is trained on the evolution of spine-sheath relativistic jets created with \texttt{BHAC}, in special-relativistic MHD (SRMHD). The model is directly applied on the adaptive mesh, highlighting the need for linear attention due to long sequences. The neural surrogate model is capable of capturing most of the major details, especially in early predictions. To our knowledge, this constitutes the first application of a neural operator directly on a high resolution adaptive mesh refinement grid in the context of MHD simulations.