The Great Observatories All-Sky LIRG Survey: Comparison of Ultraviolet and Far-Infrared Properties
Justin H. Howell, Lee Armus, Joseph M. Mazzarella, Aaron S. Evans,, Jason A. Surace, David B. Sanders, Andreea Petric, Phil Appleton, Greg, Bothun, Carrie Bridge, Ben H.P. Chan, Vassilis Charmandaris, David T. Frayer,, Sebastian Haan, Hanae Inami, Dong-Chan Kim, Steven Lord

TL;DR
This study compares ultraviolet and far-infrared properties of 135 luminous infrared galaxies from the GOALS survey, revealing high specific star formation rates and complex IR and UV emission relationships influenced by galaxy interactions.
Contribution
It provides a detailed analysis of UV and IR properties across different interaction stages of LIRGs, highlighting deviations from standard starburst relations and the distribution of IR and UV emission in interacting systems.
Findings
Median FUV contribution to SFR is 2.8%.
LIRGs show higher IR excess than expected from UV colors.
19% of IR luminosity arises from red UV color LIRGs.
Abstract
The Great Observatories All-sky LIRG Survey (GOALS) consists of a complete sample of 202 Luminous Infrared Galaxies (LIRGs) selected from the IRAS Revised Bright Galaxy Sample (RBGS). The galaxies span the full range of interaction stages, from isolated galaxies to interacting pairs to late stage mergers. We present a comparison of the UV and infrared properties of 135 galaxies in GOALS observed by GALEX and Spitzer. For interacting galaxies with separations greater than the resolution of GALEX and Spitzer (2-6"), we assess the UV and IR properties of each galaxy individually. The contribution of the FUV to the measured SFR ranges from 0.2% to 17.9%, with a median of 2.8% and a mean of 4.0 +/- 0.4%. The specific star formation rate of the GOALS sample is extremely high, with a median value (3.9*10^{-10} yr^{-1}) that is comparable to the highest specific star formation rates seen in the…
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