The far-infrared/radio correlation and radio spectral index of galaxies in the SFR-M* plane up to z 2
B. Magnelli, R. J. Ivison, D. Lutz, I. Valtchanov, D. Farrah, S., Berta, F. Bertoldi, J. Bock, A. Cooray, E. Ibar, A. Karim, E. Le Floc'h, R., Nordon, S. J. Oliver, M. Page, P. Popesso, F. Pozzi, D. Rigopoulou, L., Riguccini, G. Rodighiero, D. Rosario, I. Roseboom, L. Wang

TL;DR
This study investigates how the far-infrared/radio correlation and radio spectral index of star-forming galaxies evolve up to redshift 2, revealing stable radio spectra and a mild decline in the correlation with increasing redshift.
Contribution
It provides the first comprehensive analysis of the evolution of the FRC and radio spectral index across the SFR-M* plane up to z=2, using stacked Herschel, VLA, and GMRT data.
Findings
Radio spectral index remains consistent at ~0.8 up to z=2.
The far-infrared/radio correlation (qFIR) decreases mildly with redshift.
No strong correlation between qFIR and galaxy position relative to the main sequence.
Abstract
[Abridged] We study the evolution of the radio spectral index and far-infrared/radio correlation (FRC) across the star-formation rate-stellar masse (i.e. SFR-M*) plane up to z 2. We start from a M*-selected sample of galaxies with reliable SFR and redshift estimates. We then grid the SFR-M* plane in several redshift ranges and measure the infrared luminosity, radio luminosity, radio spectral index, and ultimately the FRC index (i.e. qFIR) of each SFR-M*-z bin. The infrared luminosities of our SFR-M*-z bins are estimated using their stacked far-infrared flux densities inferred from observations obtained with Herschel. Their radio luminosities and radio spectral indices (i.e. alpha, where Snu nu^-alpha) are estimated using their stacked 1.4GHz and 610MHz flux densities from the VLA and GMRT, respectively. Our far-infrared and radio observations include the most widely studied blank…
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