A relativistic orbit model for temporal properties of AGN
Prerna Rana (1), A. Mangalam (1) ((1) Indian Institute of, Astrophysics)

TL;DR
This paper develops a relativistic orbit model to explain the diverse quasi-periodic oscillations observed in active galactic nuclei across X-ray, gamma-ray, and optical bands, linking plasma motion in coronae and jets to observed timing features.
Contribution
It introduces a unified relativistic orbit framework that models QPOs in AGN, deriving orbital parameters and PSD features, and connects plasma dynamics to observed variability across multiple wavelengths.
Findings
Relativistic precession model successfully fits X-ray QPOs in NLSy1 galaxies.
Lighthouse model indicates a kinematic origin of gamma-ray and optical QPOs in jets.
PSD analysis reveals a break at the ISCO energy, linking spectral features to plasma orbital properties.
Abstract
We present a unified model for X-ray quasi-periodic oscillations (QPOs) seen in Narrow-line Seyfert 1 (NLSy1) galaxies, -ray and optical band QPOs that are seen in Blazars. The origin of these QPOs is attributed to the plasma motion in corona or jets of these AGN. In the case of X-ray QPOs, we applied the general relativistic precession model for the two simultaneous QPOs seen in NLSy1 1H 0707-945 and deduce orbital parameters, such the radius of the emission region, and spin parameter for a circular orbit; we obtained the Carter's constant , , and the radius in the case of a spherical orbit solution. In other cases where only one X-ray QPO is seen, we localized the orbital parameters for NLSy1 galaxies REJ 1034+396, 2XMM J123103.2+110648, MS 2254.9-3712, Mrk 766, and MCG-06-30-15. By applying the lighthouse model, we found that a kinematic origin of the jet based…
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