An Artificial Intelligence based approach for constraining the redshift of blazars using $\gamma$--ray observation
K K Singh, V K Dhar, P J Meintjes

TL;DR
This paper presents an AI-based method using neural networks to estimate blazar redshifts from gamma-ray spectral data, enabling redshift constraints with limited observational information.
Contribution
The study introduces a novel ANN approach trained on multi-instrument gamma-ray data to predict blazar redshifts from spectral indices alone.
Findings
Predicted redshifts agree within 18% of known values.
The method effectively uses spectral indices from GeV and TeV regimes.
Potential to estimate redshifts for blazars with limited data.
Abstract
In this paper, we discuss an artificial intelligence based approach to constrain the redshift of blazars using combined --ray observations from the \emph{Fermi} Large Area Telescope (LAT) and ground based atmospheric Cherenkov telescopes (ACTs) in GeV and \emph{sub} TeV energy regimes respectively. The spectral measurements in GeV and TeV energy bands show a redshift dependent spectral break in the --ray spectra of blazars. We use this observational feature of blazars to constrain their redshift. The observed spectral information of blazars with known redshifts reported in the \emph{Fermi} catalogs (3FGL and 1FHL) and TeV catalog are used to train an Artificial Neural Network (ANN) based algorithm. The training of the ANN methodology is optimized using \emph{Levenberg - Marquardt} algorithm with --ray spectral indices and redshifts of 35 well observed blazars as…
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