Examining the Radio-Loud/Radio-Quiet dichotomy with new Chandra and VLA observations of 13 UGC galaxies
Preeti Kharb (1), A. Capetti (2), D. J. Axon (1,3), M. Chiaberge (4),, P. Grandi (5), A. Robinson (1), G. Giovannini (6), B. Balmaverde (7), D., Macchetto (4), and R. Montez (1) ((1) Rochester Institute of Technology, NY, (2) Osservatorio Astronomico di Torino

TL;DR
This study investigates the radio-loud/radio-quiet dichotomy in low luminosity AGN within nearby galaxies, revealing that host galaxy surface brightness profiles significantly influence their radio and X-ray emission properties.
Contribution
It demonstrates that the radio-loud/radio-quiet classification depends on the host galaxy's optical surface brightness profile, supported by new high-resolution radio and X-ray observations.
Findings
Radio sources detected in 12 of 13 galaxies
Power-law and intermediate galaxies are more radio-loud than core galaxies
Significant differences in radio-optical and radio-X-ray spectral indices between galaxy types
Abstract
(Abridged) We present the results from new 15 ks Chandra-ACIS and 4.9 GHz Very Large Array observations of 13 galaxies hosting low luminosity AGN. This completes the multiwavelength study of a sample of 51 nearby early-type galaxies described in Capetti & Balmaverde (2005, 2006); Balmaverde & Capetti (2006). The aim of the three previous papers was to explore the connection between the host galaxies and AGN activity in a radio-selected sample. We detect nuclear X-ray emission in eight sources and radio emission in all but one (viz., UGC6985). The new VLA observations improve the spatial resolution by a factor of ten: the presence of nuclear radio sources in 12 of the 13 galaxies confirms their AGN nature. As previously indicated, the behavior of the X-ray and radio emission in these sources depends strongly on the form of their optical surface brightness profiles derived from Hubble…
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