Machine Learning Constraints on Dark Matter Annihilation during the Epoch of Reionization: A CNN Analysis of the 21-cm Signal
Atsushi J. Nishizawa, Pravin Kumar Natwariya, Kenji Kadota

TL;DR
This study uses CNNs to analyze how dark matter annihilation influences the 21-cm signal during reionization, demonstrating that machine learning can detect subtle effects of dark matter properties on the early universe's thermal history.
Contribution
The paper introduces a CNN-based approach to distinguish dark matter annihilation effects on the 21-cm signal, outperforming traditional analysis methods and accounting for structure formation boosts.
Findings
CNNs effectively differentiate annihilation scenarios from non-annihilation cases.
Dark matter clumping significantly enhances the annihilation signal.
Detectable imprints of dark matter annihilation remain observable with SKA-like noise levels.
Abstract
We explore the impact of dark matter annihilation on the 21-cm signal during the cosmic dawn and epoch of reionization (EoR). Using modified 21cmFAST simulations and convolutional neural networks (CNNs), we investigate how energy injected into the intergalactic medium (IGM) through dark matter annihilation affects the evolution of the 21-cm differential brightness temperature. Focusing on two annihilation channels, photon-photon () and electron-positron (), we examine a broad range of dark matter masses and annihilation cross-sections. Our results show that CNNs outperform traditional power spectrum analysis by effectively distinguishing between subtle differences in simulated 21-cm maps produced by annihilation and non-annihilation scenarios. We also demonstrate that the structure formation boost, driven by dark matter clumping into halos and subhalos,…
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Taxonomy
TopicsDark Matter and Cosmic Phenomena · Atomic and Subatomic Physics Research
