Star Formation in the Local Universe from the CALIFA sample. I. Calibrating the SFR using IFS data
C. Catal\'an-Torrecilla, A. Gil de Paz, A. Castillo-Morales, J., Iglesias-P\'aramo, S.F. S\'anchez, R. C. Kennicutt, P.G. P\'erez-Gonz\'alez,, R. A. Marino, C.J. Walcher, B. Husemann, R. Garc\'ia-Benito, D. Mast, R. M., Gonz\'alez Delgado, J.C. Mu\~noz-Mateos, J. Bland-Hawthorn

TL;DR
This study uses integral field spectroscopy data from the CALIFA survey to calibrate star formation rate estimators in local galaxies, providing updated, property-dependent relations that improve SFR measurements from Hα, UV, and IR data.
Contribution
It offers new calibration relations for SFR estimation using IFS data, accounting for galaxy properties like stellar mass and morphology, and assesses the reliability of hybrid tracers in the local universe.
Findings
Hα luminosity from IFS aligns with hybrid SFR estimators across various SFRs.
The dust reprocessing coefficient, a_{IR}, varies with galaxy type and attenuation.
IFS-based Hα measurements effectively estimate SFR in statistically significant local galaxy samples.
Abstract
The Star Formation Rate (SFR) is one of the main parameters used to analyze the evolution of galaxies through time. The need for recovering the light reprocessed by dust commonly requires the use of low spatial resolution far-infrared data. Recombination-line luminosities provide an alternative, although uncertain dust-extinction corrections based on narrow-band imaging or long-slit spectroscopy have traditionally posed a limit to their applicability. Integral Field Spectroscopy (IFS) is clearly the way to overcome such limitation. We obtain integrated H{\alpha}, ultraviolet (UV) and infrared (IR)-based SFR measurements for 272 galaxies from the CALIFA survey at 0.005 < z < 0.03 using single-band and hybrid tracers. We provide updated calibrations, both global and split by properties (including stellar mass and morphological type), referred to H{\alpha}. The extinction-corrected…
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