Resolving Turbulent Magnetohydrodynamics: A Hybrid Operator-Diffusion Framework

We present a hybrid machine learning framework that combines Physics-Informed Neural Operators (PINOs) with score-based generative diffusion models to simulate the full spatio-temporal evolution of two-dimensional, incompressible, resistive magnetohydrodynamic (MHD) turbulence across a broad range of Reynolds numbers (). The framework leverages the equation-constrained generalization capabilities of PINOs to predict coherent, low-frequency dynamics, while a conditional diffusion model stochastically corrects high-frequency residuals, enabling accurate modeling of fully developed turbulence. Trained on a comprehensive ensemble of high-fidelity simulations with , the approach achieves state-of-the-art accuracy in regimes previously inaccessible to deterministic surrogates. At and , the model faithfully reconstructs the full spectral energy distributions of both velocity and magnetic fields late into the simulation, capturing non-Gaussian statistics, intermittent structures, and cross-field correlations with high fidelity. At extreme turbulence levels (), it remains the first surrogate capable of recovering the high-wavenumber evolution of the magnetic field, preserving large-scale morphology and enabling statistically meaningful predictions.
View on arXiv@article{kacmaz2025_2507.02106, title={ Resolving Turbulent Magnetohydrodynamics: A Hybrid Operator-Diffusion Framework }, author={ Semih Kacmaz and E. A. Huerta and Roland Haas }, journal={arXiv preprint arXiv:2507.02106}, year={ 2025 } }