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.
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