The Herschel census of infrared SEDs through cosmic time
Myrto Symeonidis, M. Vaccari, S. Berta, M.J. Page, D.Lutz, V., Arumugam, H. Aussel, J. Bock, A. Boselli, V. Buat, P. L. Capak, D.L., Clements, A. Conley, L. Conversi, A. Cooray, C.D. Dowell, D. Farrah,, A.Franceschini, E. Giovannoli, J. Glenn, M. Griffin, E. Hatziminaoglou

TL;DR
This study uses Herschel data to analyze the dust properties of IR-luminous galaxies across 0.1<z<2, revealing how their dust temperatures and SEDs evolve over cosmic time with minimal selection bias.
Contribution
It provides the first bias-corrected analysis of IR-luminous galaxy SEDs and their evolution, highlighting the impact of dust distribution and mass on their properties.
Findings
IR-luminous galaxies have broad far-IR peaks with cool/extended dust emission.
A luminosity-temperature relation exists, driven mainly by dust mass and starburst size.
Dust temperatures in high-redshift IR galaxies are lower than local counterparts, indicating more extended dust distributions.
Abstract
Using Herschel data from the deepest SPIRE and PACS surveys (HerMES and PEP) in COSMOS and GOODS (N+S), we examine the dust properties of IR-luminous (L_IR>10^10 L_sun) galaxies at 0.1<z<2 and determine how these evolve with cosmic time. The unique angle of this work is the rigorous analysis of survey selection effects, making this the first study of the star-formation-dominated, IR-luminous population within a framework almost entirely free of selection biases. We find that IR-luminous galaxies have SEDs with broad far-IR peaks characterised by cool/extended dust emission and average dust temperatures in the 25-45K range. Hot (T>45K) SEDs and cold (T<25K), cirrus-dominated SEDs are rare, with most sources being within the range occupied by warm starbursts such as M82 and cool spirals such as M51. We observe a luminosity-temperature (L-T) relation, where the average dust temperature of…
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