Generative Models of 21cm EoR Lightcones with 3D Scattering Transforms
Ian Hothi, Erwan Allys, Benoit Semelin, Romain Meriot

TL;DR
This paper develops a 3D scattering transform-based generative modeling approach for 21cm EoR lightcones, enabling improved non-Gaussian component separation in cosmological data analysis.
Contribution
It extends scattering transforms to three-dimensional EoR lightcones and constructs maximum entropy generative models validated by multiple statistical measures.
Findings
Synthesised lightcones match target data well statistically.
The approach captures non-Gaussian features effectively.
Potential for improved foreground separation in EoR studies.
Abstract
The 21cm signal from the Epoch of Reionization (EoR) is observed as a three-dimensional data set known as a lightcone, consisting of a redshift (frequency) axis and two spatial sky plane axes. When observed by radio interferometers, this EoR signal is strongly obscured by foregrounds that are several orders of magnitude stronger. Due to its inherently non-Gaussian nature, the EoR signal requires robust statistical tools to accurately separate it from these foreground contaminants, but current foreground separation techniques focus primarily on recovering the EoR power spectrum, often neglecting valuable non-Gaussian information. Recent developments in astrophysics, particularly in the context of the Galactic interstellar medium, have demonstrated the efficacy of scattering transforms - novel summary statistics for highly non-Gaussian processes - for component separation tasks. Motivated…
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