Galaxy and Mass Assembly (GAMA): ugriz galaxy luminosity functions
J. Loveday, P. Norberg, I. K. Baldry, S. P. Driver, A. M. Hopkins, J., A. Peacock, S. P. Bamford, J. Liske, J. Bland-Hawthorn, S. Brough, M. J. I., Brown, E. Cameron, C.J. Conselice, S.M. Croom, C.S. Frenk, M. Gunawardhana,, D.T. Hill, D.H. Jones, L. S. Kelvin, K. Kuijken

TL;DR
This study uses GAMA survey data to measure galaxy luminosity functions across multiple bands, revealing how galaxy populations and their brightness evolve over redshift, with blue and red galaxies showing distinct evolutionary trends.
Contribution
It provides the first detailed measurement of galaxy luminosity functions and their evolution in ugriz bands from the GAMA survey, including the characterization of blue and red galaxy populations.
Findings
Blue galaxies fit simple Schechter functions across magnitudes.
Red galaxies require double Schechter functions due to a faint-end dip.
Luminosity evolution shows L* increasing with redshift.
Abstract
Galaxy and Mass Assembly (GAMA) is a project to study galaxy formation and evolution, combining imaging data from ultraviolet to radio with spectroscopic data from the AAOmega spectrograph on the Anglo-Australian Telescope. Using data from phase 1 of GAMA, taken over three observing seasons, and correcting for various minor sources of incompleteness, we calculate galaxy luminosity functions (LFs) and their evolution in the ugriz passbands. At low redshift, z < 0.1, we find that blue galaxies, defined according to a magnitude-dependent but non-evolving colour cut, are reasonably well fit over a range of more than ten magnitudes by simple Schechter functions in all bands. Red galaxies, and the combined blue-plus-red sample, require double power-law Schechter functions to fit a dip in their LF faintward of the characteristic magnitude M* before a steepening faint end. This upturn is at…
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