The luminosity-dependent high-redshift turnover in the steep spectrum radio luminosity function: clear evidence for downsizing in the radio-AGN population
E. E. Rigby, P. N. Best, M. H. Brookes, J. A. Peacock, J. S. Dunlop,, H. J. A. R\"ottgering, J. V. Wall, L. Ker

TL;DR
This study introduces a new method and dataset to analyze the evolution of high-redshift steep-spectrum radio sources, revealing a luminosity-dependent decline in their density consistent with cosmic downsizing.
Contribution
It provides the first evidence of a luminosity-dependent high-redshift turnover in the radio luminosity function using a novel grid-based modeling approach and comprehensive radio surveys.
Findings
Clear decline in lower luminosity sources at z > 0.7
Turnover shifts to higher redshifts for more luminous sources
Results robust against redshift estimation errors
Abstract
This paper presents a new grid-based method for investigating the evolution of the steep-spectrum radio luminosity function, with the aim of quantifying the high-redshift cut-off suggested by previous work. To achieve this, the Combined EIS-NVSS Survey of Radio Sources (CENSORS) has been developed; this is a 1.4 GHz radio survey, containing 135 sources complete to a flux density of 7.2 mJy, selected from the NRAO VLA Sky Survey (NVSS) over 6 deg^2 of the ESO Imaging Survey (EIS) Patch D. The sample is currently 73% spectroscopically complete, with the remaining redshifts estimated via the K-z or I-z magnitude-redshift relation. CENSORS is combined with additional radio data from the Parkes All-Sky, Parkes Selected Regions, Hercules and VLA COSMOS samples to provide comprehensive coverage of the radio power vs. redshift plane. The redshift distributions of these samples, together with…
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