The Quasar Feedback Survey: Discovering hidden Radio-AGN and their connection to the host galaxy ionised gas
M.E. Jarvis (MPA/ESO/LMU), C.M. Harrison (Newcastle University), V., Mainieri, D.M. Alexander, F. Arrigoni Battaia, G. Calistro Rivera, C., Circosta, T. Costa, C. De Breuck, A.C. Edge, A. Girdhar, D. Kakkad, P. Kharb,, G.B. Lansbury, S.J. Molyneux, D. Mukherjee, J.R. Mullaney

TL;DR
This study reveals that a significant portion of moderate radio luminosity AGN exhibit extended radio features and associated ionized gas, indicating prevalent AGN-related processes and a connection between radio emission and host galaxy gas.
Contribution
First comprehensive analysis of radio features and their link to ionized gas in a sample of moderate radio luminosity AGN, highlighting the prevalence of AGN-related radio emission.
Findings
67% of sample have extended radio features on 1-60 kpc scales
At least 57% show radio emission linked to AGN processes
Radio size correlates with [O III] line width and luminosity
Abstract
We present the first results from the Quasar Feedback Survey, a sample of 42 z<0.2, [O III] luminous AGN (L[O III]>10^42.1 ergs/s) with moderate radio luminosities (i.e. L(1.4GHz)>10^23.4 W/Hz; median L(1.4GHz)=5.9x10^23 W/Hz). Using high spatial resolution (~0.3-1 arcsec), 1.5-6 GHz radio images from the Very Large Array, we find that 67 percent of the sample have spatially extended radio features, on ~1-60 kpc scales. The radio sizes and morphologies suggest that these may be lower radio luminosity versions of compact, radio-loud AGN. By combining the radio-to-infrared excess parameter, spectral index, radio morphology and brightness temperature, we find radio emission in at least 57 percent of the sample that is associated with AGN-related processes (e.g. jets, quasar-driven winds or coronal emission). This is despite only 9.5-21 percent being classified as radio-loud using…
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