A High Fraction of Heavily X-ray Obscured Active Galactic Nuclei
Christopher M. Carroll, Tonima T. Ananna, Ryan C. Hickox, Alberto, Masini, Roberto J. Assef, Daniel Stern, Chien-Ting J. Chen, Lauranne Lanz

TL;DR
This study estimates that over 50% of mid-infrared selected active galactic nuclei are heavily obscured by gas and dust, revealing a significant population missed by traditional X-ray surveys and emphasizing the importance of multiwavelength observations.
Contribution
The paper introduces a novel MCMC-based method to estimate the fraction of Compton-thick AGNs using MIR selection and X-ray modeling, providing new insights into obscured AGN populations.
Findings
Estimated CT AGN fraction is approximately 55%.
At least 50% of MIR-selected AGNs are Compton-thick.
Results align with independent studies, confirming a large obscured AGN population.
Abstract
We present new estimates on the fraction of heavily X-ray obscured, Compton-thick (CT) active galactic nuclei (AGNs) out to a redshift of 0.8. From a sample of 540 AGNs selected by mid-IR (MIR) properties in observed X-ray survey fields, we forward model the observed-to-intrinsic X-ray luminosity ratio () with a Markov chain Monte Carlo (MCMC) simulation to estimate the total fraction of CT AGNs (), many of which are missed in typical X-ray observations. We create model distributions and convert these to using a set of X-ray spectral models. We probe the posterior distribution of our models to infer the population of X-ray non-detected sources. From our simulation we estimate a CT fraction of = . We perform an X-ray stacking analysis for sources in…
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Taxonomy
TopicsAstrophysical Phenomena and Observations · Gamma-ray bursts and supernovae · Scientific Measurement and Uncertainty Evaluation
