Evidence for a fast evolution of the UV luminosity function beyond redshift 6 from a deep HAWK-I survey of the GOODS-S field
M. Castellano, A. Fontana, K. Boutsia, A. Grazian, L. Pentericci, R., Bouwens, M. Dickinson, M. Giavalisco, P. Santini, S. Cristiani, F. Fiore, S., Gallozzi, E. Giallongo, R. Maiolino, F. Mannucci, N. Menci, A. Moorwood, M., Nonino, D. Paris, A. Renzini, P. Rosati, S. Salimbeni

TL;DR
This study uses deep near-infrared imaging to investigate the evolution of the UV luminosity function of galaxies between redshifts 6.5 and 7.5, providing new constraints on galaxy formation during this epoch.
Contribution
It presents the first results from an ESO Large Program using Hawk-I at the VLT to measure the UV luminosity function evolution beyond redshift 6.
Findings
Detected 7 high-quality z-dropout galaxy candidates.
Ruled out a constant luminosity function from z=6 to z=7 at 99% confidence.
Found a significant decrease in UV luminosity density by a factor of 3.5 from z=6 to z~6.8.
Abstract
We perform a deep search for galaxies in the redshift range 6.5<z<7.5, to measure the evolution of the number density of luminous galaxies in this redshift range and derive useful constraints on the evolution of their Luminosity Function. We present here the first results of an ESO Large Program, that exploits the unique combination of area and sensitivity provided in the near-IR by the camera Hawk-I at the VLT. We have obtained two Hawk-I pointings on the GOODS South field for a total of 32 observing hours, covering ~90 arcmin2. The images reach Y=26.7 mags for the two fields. We have used public ACS images in the z band to select z-dropout galaxies with the colour criteria Z-Y>1, Y-J<1.5 and Y-K<2. The other public data in the UBVRIJHK bands are used to reject possible low redshift interlopers. The output has been compared with extensive Monte Carlo simulations to quantify the…
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