The VIMOS VLT Deep Survey: Star Formation Rate Density of Lya emitters from a sample of 217 galaxies with spectroscopic redshifts 2<z<6.6
P. Cassata, O. Le Fevre, B. Garilli, D. Maccagni, V. Le Brun, M., Scodeggio, L. Tresse, O. Ilbert, G. Zamorani, O. Cucciati, T. Contini, R., Bielby, Y. Mellier, H. J. McCracken, A. Pollo, A. Zanichelli, S. Bardelli, A., Cappi, L. Pozzetti, D. Vergani, E. Zucca

TL;DR
This study analyzes a large sample of Ly-alpha emitters across redshifts 2 to 6.6 to determine their contribution to the universe's star formation rate density, revealing that faint LAEs significantly impact early cosmic star formation and their luminosity function remains stable over this period.
Contribution
First comprehensive analysis of 217 spectroscopically confirmed LAEs from VVDS, constraining the faint end slope of the luminosity function and its evolution from z=2 to 6.6.
Findings
Faint LAEs contribute significantly to the SFRD at high redshifts.
The luminosity function of LAEs does not evolve from z=2 to z=6.
LAEs are the dominant source of ionizing photons at z>5-6.
Abstract
Aims. The aim of this work is to study the contribution of the Ly-a emitters (LAE) to the star formation rate density (SFRD) of the Universe in the interval 2<z<6.6. Methods. We assembled a sample of 217 LAE from the Vimos-VLT Deep Survey (VVDS) with secure spectroscopic redshifts in the redshift range 2 < z < 6.62 and fluxes down to F=1.5x10^18 erg/s/cm^2. 133 LAE are serendipitous identifications in the 22 arcmin^2 total slit area surveyed with the VVDS-Deep and the 3.3 arcmin^2 from the VVDS Ultra-Deep survey, and 84 are targeted identifications in the 0.62 deg^2 surveyed with the VVDS-DEEP and 0.16 deg^2 from the Ultra-Deep survey. Among the serendipitous targets we estimate that 90% of the emission lines are most probably Ly-a, while the remaining 10% could be either [OII]3727 or Ly-a. We computed the LF and derived the SFRD from LAE at these redshifts. Results. The VVDS-LAE…
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