The first Herschel view of the mass-SFR link in high-z galaxies
G. Rodighiero, A. Cimatti, C. Gruppioni, P. Popesso, P. Andreani, B., Altieri, H. Aussel, S. Berta, A. Bongiovanni, D. Brisbin, A. Cava, J. Cepa,, E. Daddi, H. Dominguez-Sanchez, D. Elbaz, A. Fontana, N. Forster Schreiber,, A. Franceschini, R. Genzel, A. Grazian, D. Lutz

TL;DR
This study uses Herschel observations to analyze the relationship between star formation rate and stellar mass in high-redshift galaxies, revealing how this link evolves up to z~2 and emphasizing Herschel's role in accurately measuring IR luminosities.
Contribution
It provides the first Herschel-based calibration of IR luminosity estimates at high redshift and investigates the evolution of the SSFR-mass relation using stacking analysis.
Findings
SSFR-mass relation steepens with redshift, nearly flat at z<1 and slope -0.50 at z~2.
Mean SSFR increases by a factor of ~15 from z=0 to z=2 for massive galaxies.
Massive galaxies have lower SSFR at all redshifts, indicating earlier and faster star formation.
Abstract
We exploit deep observations of the GOODS-N field taken with PACS, on board of Herschel, as part of the PEP guaranteed time, to study the link between star formation and stellar mass in galaxies to z~2. Starting from a stellar mass-selected sample of ~4500 galaxies with mag[4.5mu]<23 (AB), we identify ~350 objects with a PACS detection at 100 or 160mu and ~1500 with only Spitzer 24 mu counterpart. Stellar masses and total IR luminosities (LIR) are estimated by fitting the SEDs. Consistently with other Herschel results, we find that LIR based only on 24 mu data is overestimated by a median factor ~1.8 at z~2, whereas it is underestimated (with our approach) up to a factor ~1.6 at 0.5<z<1.0. We then exploit this calibration to correct LIR based on the MIPS fluxes. These results clearly show how Herschel is fundamental to constrain LIR, and hence the SFR, of high redshift galaxies. Using…
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