Detection of high Lyman continuum leakage from four low-redshift compact star-forming galaxies
Y. I. Izotov (1), D. Schaerer (2,3), T. X. Thuan (4), G. Worseck (5),, N. G. Guseva (1), I. Orlitova (6), A. Verhamme (2) ((1) Main Astronomical, Observatory, Ukrainian National Academy of Sciences, Kyiv, Ukraine, (2), Observatoire de Geneve, Versoix, Switzerland, (3) IRAP/CNRS

TL;DR
This study reports the detection of high Lyman continuum escape fractions in four low-redshift compact star-forming galaxies, indicating efficient LyC leakage associated with specific galaxy properties, and supports the selection criteria for identifying LyC leakers.
Contribution
First demonstration of high LyC escape fractions in multiple low-redshift galaxies using HST/COS, linking galaxy properties to LyC leakage and validating selection methods.
Findings
LyC escape fractions of 6-13% in four galaxies
Detection of double-peaked Lyalpha emission lines
Galaxies have properties similar to high-redshift star-forming galaxies
Abstract
Following our first detection reported in Izotov et al. (2016), we present the detection of Lyman continuum (LyC) radiation of four other compact star-forming galaxies observed with the Cosmic Origins Spectrograph (COS) onboard the Hubble Space Telescope (HST). These galaxies, at redshifts of z~0.3, are characterized by high emission-line flux ratios [OIII]5007/[OII]3727 > 5. The escape fractions of the LyC radiation fesc(LyC) in these galaxies are in the range of ~6%-13%, the highest values found so far in low-redshift star-forming galaxies. Narrow double-peaked Lyalpha emission lines are detected in the spectra of all four galaxies, compatible with predictions for Lyman continuum leakers. We find escape fractions of Lyalpha, fesc(Lyalpha) ~20%-40%, among the highest known for Lyalpha emitters (LAEs). Surface brightness profiles produced from the COS acquisition images reveal bright…
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