The VIMOS Ultra Deep Survey: The role of HI kinematics and HI column density on the escape of Lyalpha photons in star-forming galaxies at 2<z<4
L. Guaita, M. Talia, L. Pentericci, A. Verhamme, P. Cassata, B. C., Lemaux, I. Orlitova, B. Ribeiro, D. Schaerer, G. Zamorani, B. Garilli, V. Le, Brun, O. Le Fevre, D. Maccagni, L. A. M. Tasca, R. Thomas, E. Vanzella, E., Zucca, R. Amorin, S. Bardelli, M. Castellano, A. Grazian

TL;DR
This study investigates how HI gas kinematics and column density influence Lyalpha photon escape in star-forming galaxies at redshifts 2 to 4, using spectral stacking and radiative transfer models.
Contribution
It provides new insights into the relationship between HI gas properties and Lyalpha emission features in high-redshift galaxies.
Findings
Galaxies with faint UV and strong Lyalpha show outflows of a few hundred km/sec.
Lower Deltav correlates with larger Lyalpha peak shifts and spatial extension.
High HI column density (>10^20/cm^2) causes larger Lyalpha peak shifts and more scattering.
Abstract
We selected a sample of 76 Lya emitting galaxies from the VIMOS Ultra Deep Survey (VUDS) at 2<z<4. We estimated the velocity of the neutral gas flowing out of the interstellar medium as the velocity offset, Deltav, between the systemic redshift (zsys) and the center of low-ionization absorption line systems (LIS). To increase the SN of VUDS spectra, we stacked subsamples. We measured the systemic redshift from the rest-frame UV spectroscopic data using the CIII]1908 nebular emission line, and we considered SiII1526 as the highest signal-to-noise LIS line. We calculated the Lya peak shift with respect to the zsys, the EW(Lya), and the Lya spatial extension, Ext(Lya-C), from the profiles in the 2D stacked spectra. The galaxies that are faint in the rest-frame UV continuum, strong in Lya and CIII], with compact UV morphology, and localized in an underdense environment are characterized by…
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