The [OIII] emission line luminosity function of optically selected type-2 AGN from zCOSMOS
A. Bongiorno, M. Mignoli, G. Zamorani, F. Lamareille, G. Lanzuisi, T., Miyaji, M. Bolzonella, C. M. Carollo, T. Contini, J. P. Kneib, O. Le Fevre,, S. J. Lilly, V. Mainieri, A. Renzini, M. Scodeggio, S. Bardelli, M. Brusa, K., Caputi, F. Civano, G. Coppa, O. Cucciati

TL;DR
This study presents a comprehensive catalog of type-2 AGN from zCOSMOS, analyzing their luminosity function, evolution, and obscured fraction, revealing a luminosity-dependent density evolution and a slight increase in obscured fraction with redshift.
Contribution
First detailed luminosity function of optically selected type-2 AGN over a wide redshift and luminosity range, combining zCOSMOS and SDSS data.
Findings
Type-2 AGN luminosity function constrained across redshifts 0.15-0.92.
Obscured fraction decreases with luminosity, increases slightly with redshift.
Evolution best described by luminosity-dependent density evolution model.
Abstract
We present a catalog of 213 type-2 AGN selected from the zCOSMOS survey. The selected sample covers a wide redshift range (0.15<z<0.92) and is deeper than any other previous study, encompassing the luminosity range 10^{5.5} < Lsun< L[OIII] < 10^{9.1} Lsun. We explore the intrinsic properties of these AGN and the relation to their X-ray emission (derived from the XMM-COSMOS observations). We study their evolution by computing the [OIII]5007A line luminosity function (LF) and we constrain the fraction of obscured AGN as a function of luminosity and redshift. The sample was selected on the basis of the optical emission line ratios, after applying a cut to the signal-to-noise ratio (S/N) of the relevant lines. We used the standard diagnostic diagrams [OIII]/Hbeta versus [NII]/Halpha and ([OIII]/Hbeta versus [SII]/Halpha) to isolate AGN in the redshift range 0.15<z<0.45 and the diagnostic…
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