COIMLGSep 26, 2025

Exploring the Early Universe with Deep Learning

arXiv:2509.22018v3h-index: 25EPIA
Originality Synthesis-oriented
AI Analysis

This work addresses data analysis for cosmology researchers studying the Epoch of Reionization, but it is incremental as it applies existing deep learning methods to a new domain.

The authors tackled the challenge of extracting astrophysical information from the Square Kilometre Array Observatory data, which is contaminated by foregrounds and systematics, by applying deep learning to 2D power spectra, achieving over 0.95 R² score in recovering the reionization history.

Hydrogen is the most abundant element in our Universe. The first generation of stars and galaxies produced photons that ionized hydrogen gas, driving a cosmological event known as the Epoch of Reionization (EoR). The upcoming Square Kilometre Array Observatory (SKAO) will map the distribution of neutral hydrogen during this era, aiding in the study of the properties of these first-generation objects. Extracting astrophysical information will be challenging, as SKAO will produce a tremendous amount of data where the hydrogen signal will be contaminated with undesired foreground contamination and instrumental systematics. To address this, we develop the latest deep learning techniques to extract information from the 2D power spectra of the hydrogen signal expected from SKAO. We apply a series of neural network models to these measurements and quantify their ability to predict the history of cosmic hydrogen reionization, which is connected to the increasing number and efficiency of early photon sources. We show that the study of the early Universe benefits from modern deep learning technology. In particular, we demonstrate that dedicated machine learning algorithms can achieve more than a $0.95$ $R^2$ score on average in recovering the reionization history. This enables accurate and precise cosmological and astrophysical inference of structure formation in the early Universe.

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