Far-IR Emission From Dust-Obscured Galaxies
J.A. Calanog, J. Wardlow, Hai Fu, A. Cooray, R.J. Assef, J. Bock, C.M., Casey, A. Conley, D. Farrah, E. Ibar, J. Kartaltepe, G. Magdis, L. Marchetti,, S.J. Oliver, I. Perez-Fournon, D. Riechers, D. Rigopoulou, I.G. Roseboom, B., Schulz, Douglas Scott, M. Symeonidis, M. Vaccari

TL;DR
This study investigates dust-obscured galaxies at z~2, revealing their IR luminosities, dust temperatures, and contribution to cosmic star formation, using far-IR observations and stacking techniques.
Contribution
First comprehensive far-IR analysis of DOGs at z~2, quantifying their IR luminosities, dust properties, and role in cosmic star formation.
Findings
DOGs have average IR luminosities of ~2.8 x 10^12 LSun.
Detected and undetected DOGs have dust temperatures of 34K and 37K.
DOGs contribute 10-30% to the star formation rate density at z=1.5-2.5.
Abstract
Dust-obscured galaxies (DOGs) are a UV-faint, IR-bright galaxy population that reside at z~2 and are believed to be in a phase of dusty star-forming and AGN activity. We present far-IR observations of a complete sample of DOGs in the 2 deg2 of COSMOS. The 3077 DOGs have <z>=1.9+/-0.3 and are selected from 24um and r+ observations using a color cut of r+ - [24]>=7.5 (AB mag) and S24>=100uJy. Based on the near-IR SEDs, 47% are star-formation dominated and 10% are AGN-dominated. We use SPIRE far-IR photometry from HerMES to calculate the IR luminosity and characteristic dust temperature for the 1572 (51%) DOGs that are detected at 250um (>=3{\sigma}). For the remaining 1505 (49%) that are undetected, we perform a median stacking analysis to probe fainter luminosities. Detected and undetected DOGs have average IR luminosities of (2.8+/-0.4) x 1012 LSun and (0.77+-0.08)x10^12LSun, and dust…
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