Sensitivity toward dark matter annihilation imprints on 21-cm signal with SKA-Low: A convolutional neural network approach
Pravin Kumar Natwariya, Kenji Kadota, Atsushi J. Nishizawa

TL;DR
This paper uses convolutional neural networks to analyze simulated 21-cm signals, demonstrating that dark matter annihilation inhomogeneities can be detected with SKA-Low, providing new insights into dark matter properties during the pre-reionization era.
Contribution
It introduces a CNN-based method to distinguish inhomogeneous dark matter annihilation signatures in 21-cm signals, accounting for realistic observational noise and different annihilation channels.
Findings
CNNs effectively differentiate inhomogeneous from homogeneous scenarios.
Detectability persists even with SKA-Low noise levels.
Inhomogeneous models leave measurable imprints on 21-cm maps.
Abstract
This study investigates the sensitivity of the radio interferometers to identify imprints of spatially inhomogeneous dark matter annihilation signatures in the 21-cm signal during the pre-reionization era. We focus on the upcoming low-mode survey of the Square Kilometre Array (SKA-Low) telescope. Using CNNs, we analyze simulated 3D 21-cm differential brightness temperature maps generated via the DM21cm code, which is based on 21cmFAST and DarkHistory, to distinguish between spatially homogeneous and inhomogeneous energy injection/deposition scenarios arising from dark matter annihilation. The inhomogeneous case accounts for local dark matter density contrasts and gas properties, such as thermal and ionization states, while the homogeneous model assumes uniform energy deposition. Our study focuses on two primary annihilation channels to electron-positron pairs () and photons…
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