Surrogate models for nuclear fusion with parametric Shallow Recurrent Decoder Networks: applications to magnetohydrodynamics
arXiv cs.LG / 3/12/2026
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Key Points
- The study introduces a data-driven surrogate modeling framework that uses SVD for dimensionality reduction and SHRED (SHallow REcurrent Decoder) to recover full spatio-temporal MHD fields from sparse sensor data.
- It applies the method to a parametric MHD test case involving compressible lead-lithium flow with thermal gradients and magnetic fields, reconstructing velocity, pressure, and temperature from only three temperature sensors.
- The authors test robustness across thirty random sensor configurations and show accurate state reconstruction even for magnetic field intensities not included in the training set.
- The results indicate potential for real-time monitoring and control in fusion systems due to the approach's computational efficiency and low-cost state estimation.
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