The WiggleZ Dark Energy Survey: Star-formation in UV-luminous galaxies from their luminosity functions
Russell J. Jurek, Michael J. Drinkwater, Kevin Pimbblet, Karl, Glazebrook, Chris Blake, Sarah Brough, Matthew Colless, Carlos Contreras,, Warrick Couch, Scott Croom, Darren Croton, Tamara M. Davis, Karl Forster,, David Gilbank, Mike Gladders, Ben Jelliffe, I-hui Li, Barry Madore

TL;DR
This study measures the UV luminosity function of starburst galaxies at 0.6<z<0.9, revealing rapid evolution and excess luminous galaxies, providing insights into galaxy formation and testing AGN feedback models.
Contribution
It provides the first detailed UV luminosity functions for high star formation rate galaxies over 0.1<z<0.9, with analytic fits and implications for galaxy evolution models.
Findings
Luminous galaxy number density declines rapidly from z=0.9 to 0.6.
Excess of very luminous galaxies at z>0.55 not fit by pure Schechter function.
AGN feedback efficiency may vary with stellar mass, SFR, or redshift.
Abstract
We present the ultraviolet (UV) luminosity function of galaxies from the GALEX Medium Imaging Survey with measured spectroscopic redshifts from the first data release of the WiggleZ Dark Energy Survey. This sample selects galaxies with high star formation rates: at 0.6 < z < 0.9 the median star formation rate is at the upper 95th percentile of optically-selected (r<22.5) galaxies and the sample contains about 50 per cent of all NUV < 22.8, 0.6 < z < 0.9 starburst galaxies within the volume sampled. The most luminous galaxies in our sample (-21.0>M_NUV>-22.5) evolve very rapidly with a number density declining as (1+z)^{5\pm 1} from redshift z = 0.9 to z = 0.6. These starburst galaxies (M_NUV<-21 is approximately a star formation rate of 30 \msuny) contribute about 1 per cent of cosmic star formation over the redshift range z=0.6 to z=0.9. The star formation rate density of these very…
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