A universal average spectral energy distribution for quasars from optical to extreme ultraviolet
Zhen-Yi Cai (USTC), Jun-Xian Wang (USTC)

TL;DR
This study constructs a universal average spectral energy distribution for quasars from optical to extreme ultraviolet, revealing a luminosity-independent UV SED and a notably redder EUV spectrum than previous models, emphasizing local physical processes.
Contribution
It provides the first correction for observational biases in quasar UV detection, deriving a universal mean SED that challenges standard accretion disk models and supports local atomic processes.
Findings
UV SED shows no luminosity dependence at high luminosities.
Corrected EUV SED is significantly redder than previous spectra.
The results support a local physical process origin for quasar emission features.
Abstract
The well-known anti-correlation between the optical/ultraviolet (UV) emission line equivalent widths of active galactic nuclei and the continuum luminosity (the so-called Baldwin effect) is a long-standing puzzle. One common hypothesis is that more luminous sources have softer spectral energy distribution (SED) in the extreme UV (EUV), as revealed by some observational studies. In this work we revisit this issue through cross-matching SDSS quasars with GALEX far-UV/near-UV catalogs and correcting the effect of a severe observational bias of significant UV detection incompleteness, i.e., the more luminous in observed-frame optical, the more likely detected in observed-frame UV. We find that, for GALEX detected quasars at 1.8 < z < 2.2, the rest-frame mean UV SED (~ 500 -- 3000 Angstrom) bewilderingly shows no luminosity dependence at log(\nu L_\nu(2200 Angstrom)) > 45 (up to 47.3),…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Adaptive optics and wavefront sensing · Statistical and numerical algorithms
