On the driver of relativistic effects strength in Seyfert galaxies
M.Guainazzi (1), S.Bianchi (2,3), I.de la Calle Perez (1), M.Dovciak, (4), A.L.Longinotti (5) ((1) ESAC-ESA, Villafranca del Castillo, E, (2), Universita' Roma Tre, I, (3) INAF-OAB, Merate, I, (4) Astronomical, Institute-CAS, Prague, CZ, (5) MIT/Kavli Institute, Cambridge)

TL;DR
This study investigates what physical factors primarily influence the strength of relativistic iron lines in Seyfert galaxies, finding that the innermost accretion flow properties are key, with minimal impact from ionisation or orientation effects.
Contribution
It extends the Seyfert galaxy sample to obscured objects and analyzes the drivers of relativistic line strength, highlighting the role of inner accretion flow characteristics.
Findings
Line EW does not depend on optical classification or host galaxy inclination.
Disc ionisation is not a significant factor in EW variation.
Inner accretion flow properties mainly determine the relativistic line strength.
Abstract
Spectroscopy of X-ray emission lines emitted in accretion discs around supermassive black holes is one of the most powerful probes of the accretion flow physics and geometry, while also providing in principle observational constraints on the black hole spin.[...] We aim at determining the ultimate physical driver of the strength of this relativistic reprocessing feature. We first extend the hard X-ray flux-limited sample of Seyfert galaxies studied so far (FERO, de la Calle Perez et al. 2010) to obscured objects up to a column density N_H=6x10^23 atoms/cm/cm. We verify that none of the line properties depends on the AGN optical classification, as expected from the Seyfert unification scenarios. There is also no correlation between the accretion disc inclination, as derived from formal fits of the line profiles, and the optical type or host galaxy aspect angle, suggesting that the…
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