SIMBAD references

2016A&A...593A..55V - Astronomy and Astrophysics, volume 593A, 55-55 (2016/9-1)

Ensemble X-ray variability of active galactic nuclei. II. Excess variance and updated structure function.


Abstract (from CDS):

Context. Most investigations of the X-ray variability of active galactic nuclei (AGN) have been concentrated on the detailed analyses of individual, nearby sources. A relatively small number of studies have treated the ensemble behaviour of the more general AGN population in wider regions of the luminosity-redshift plane.
Aims. We want to determine the ensemble variability properties of a rich AGN sample, called Multi-Epoch XMM Serendipitous AGN Sample (MEXSAS), extracted from the fifth release of the XMM-Newton Serendipitous Source Catalogue (XMMSSC-DR5), with redshift between ∼0.1 and ∼5, and X-ray luminosities in the 0.5-4.5keV band between ∼1042erg/s and ∼1047erg/s.
Methods. We urge caution on the use of the normalised excess variance (NXS), noting that it may lead to underestimate variability if used improperly. We use the structure function (SF), updating our previous analysis for a smaller sample. We propose a correction to the NXS variability estimator, taking account of the light curve duration in the rest frame on the basis of the knowledge of the variability behaviour gained by SF studies.
Results. We find an ensemble increase of the X-ray variability with the rest-frame time lag τ, given by SF∝τ0.12. We confirm an inverse dependence on the X-ray luminosity, approximately as SF∝LX–0.19. We analyse the SF in different X-ray bands, finding a dependence of the variability on the frequency as SF∝ν–0.15, corresponding to a so-called softer when brighter trend. In turn, this dependence allows us to parametrically correct the variability estimated in observer-frame bands to that in the rest frame, resulting in a moderate (=>15%) shift upwards (V-correction).
Conclusions. Ensemble X-ray variability of AGNs is best described by the structure function. An improper use of the normalised excess variance may lead to an underestimate of the intrinsic variability, so that appropriate corrections to the data or the models must be applied to prevent these effects.

Abstract Copyright: © ESO, 2016

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VizieR on-line data: <Available at CDS (J/A+A/593/A55): table1.dat>

Simbad objects: 2283

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