Cosmological super-resolution of the 21-cm signal
Abstract
In this study, we train score-based diffusion models to super-resolve gigaparsec-scale cosmological simulations of the 21-cm signal. We examine the impact of network and training dataset size on model performance, demonstrating that a single simulation is sufficient for a model to learn the super-resolution task regardless of the initial conditions. Our best-performing model achieves pixelwise RMSE0.57\ mK and dimensionless power spectrum residuals ranging from 10-2-10-1\ mK2 for 1283, 2563 and 5123 voxel simulation volumes at redshift 10. The super-resolution network ultimately allows us to utilize all spatial scales covered by the SKA1-Low instrument, and could in future be employed to help constrain the astrophysics of the early Universe.
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