The Star Formation History of the Universe as Revealed by Deep Radio Observations
N. Seymour (1), T. Dwelly (2), D. Moss (2), I. McHardy (2), A. Zoghbi, (2,3), G. Rieke (4), M. Page (5), A. Hopkins (6), N. Loaring (7) ((1), Spitzer Science Center, (2) University of Southampton, (3) IoA, University of, Cambridge, (4) Steward Observatory

TL;DR
This study uses deep radio, optical, and infrared observations to distinguish between AGN and star-forming galaxies, revealing their contributions to cosmic star formation history and galaxy evolution up to redshift 3.
Contribution
First detailed separation of AGN and SFG populations in a deep multi-frequency radio survey using combined diagnostics, enabling new insights into star formation rates and galaxy evolution.
Findings
SFGs dominate at faint flux densities but AGN still contribute around 25% at 5 μJy.
The cosmic star formation rate density up to z=3 aligns with other wavelength measurements.
Evidence supports the 'downsizing' model of galaxy evolution and a maximum SFR linearly related to stellar mass.
Abstract
Discerning the exact nature of the sub-mJy radio population has been historically difficult due to the low luminosity of these sources at most wavelengths. Using deep ground based optical follow-up and observations from the Spitzer Space Telescope we are able to disentangle the radio-selected Active Galactic Nuclei (AGN) and Star Forming Galaxy (SFG) populations for the first time in a deep multi-frequency VLA/MERLIN Survey of the 13^H XMM-Newton/Chandra Deep Field. The discrimination diagnostics include radio morphology, radio spectral index, radio/near-IR and mid-IR/radio flux density ratios. We are now able to calculate the extragalactic Euclidean normalised source counts separately for AGN and SFGs. We find that while SFGs dominate at the faintest flux densities and account for the majority of the up-turn in the counts, AGN still make up around one quarter of the counts at ~5 uJy…
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