Compton Thick AGN in the XMM-COSMOS survey
G. Lanzuisi, P. Ranalli, I. Georgantopoulos, A. Georgakakis, I., Delvecchio, T. Akylas, S. Berta, A. Bongiorno, M. Brusa, N. Cappelluti, F., Civano, A. Comastri, R. Gilli, C. Gruppioni, G. Hasinger, K. Iwasawa, A., Koekemoer, E. Lusso, S. Marchesi, V. Mainieri, A. Merloni

TL;DR
This study identifies and characterizes 10 Compton Thick AGN in the XMM-COSMOS survey, revealing their properties, host galaxy features, and merger activity, and discusses their role in AGN/galaxy co-evolution.
Contribution
It provides the first detailed multi-wavelength analysis of a sample of confirmed Compton Thick AGN, including host galaxy and morphological properties, and compares findings with theoretical models.
Findings
Highly obscured AGN have smaller black hole masses and higher Eddington ratios.
Obscured AGN hosts show star formation rates consistent with the main sequence.
A larger merger fraction is observed among highly obscured AGN compared to other samples.
Abstract
Heavily obscured, Compton Thick (CT, NH>10^24 cm^-2) AGN may represent an important phase in AGN/galaxy co-evolution and are expected to provide a significant contribution to the cosmic X-ray background (CXB). Through direct X-ray spectra analysis, we selected 39 heavily obscured AGN (NH>3x10^23 cm^-2) in the 2 deg^2 XMM-COSMOS survey. After selecting CT AGN based on the fit of a simple absorbed two power law model to the XMM data, the presence of CT AGN was confirmed in 80% of the sources using deeper Chandra data and more complex models. The final sample of CT AGN comprises 10 sources spanning a large range of redshift and luminosity. We collected the multi-wavelength information available for all these sources, in order to study the distribution of SMBH and host properties, such as BH mass (M_BH), Eddington ratio (\lambda_Edd), stellar mass (M*), specific star formation rate (sSFR)…
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