Variability and spectral energy distributions of low-luminosity active galactic nuclei: a simultaneous X-ray/UV look with Swift
Elena Pian (1,2,3), Patrizia Romano (4), Dan Maoz (5), Antonino, Cucchiara (6), Claudio Pagani (6), Valentina La Parola (4) ((1), INAF-OATrieste, Italy, (2) SNS, Pisa, Italy, (3) ESO, (4) INAF-IFC, Palermo,, Italy, (5) Tel-Aviv Univ., Israel, (6) Penn State)

TL;DR
This study uses simultaneous X-ray and UV observations of four low-luminosity AGNs to analyze their variability and spectral energy distributions, revealing similarities to higher-luminosity AGNs and providing insights into their powering mechanisms.
Contribution
First simultaneous X-ray and UV study of low-luminosity AGNs, revealing variability patterns and spectral properties comparable to higher-luminosity AGNs.
Findings
Detected X-ray variability in NGC 3998 for the first time.
Observed UV and X-ray flux ratios consistent with higher-luminosity AGNs.
X-ray spectral properties similar to Seyfert galaxies.
Abstract
We have observed four low-luminosity active galactic nuclei classified as Type 1 LINERs with the X-ray Telescope (XRT) and the UltraViolet-Optical Telescope (UVOT) onboard Swift, in an attempt to clarify the main powering mechanism of this class of nearby sources. Among our targets, we detect X-ray variability in NGC 3998 for the first time. The light curves of this object reveal variations of up to 30% amplitude in half a day, with no significant spectral variability on this time scale. We also observe a decrease of ~30% over 9 days, with significant spectral softening. Moreover, the X-ray flux is ~40% lower than observed in previous years. Variability is detected in M 81 as well, at levels comparable to those reported previously: a flux increase in the hard X-rays (1-10 keV) of 30% in ~3 hours and variations by up to a factor of 2 within a few years. This X-ray behaviour is similar to…
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