The Synchrony of Production & Escape: Half the Bright Ly$\alpha$ Emitters at $z\approx2$ have Lyman Continuum Escape Fractions $\approx50\%$
Rohan P. Naidu, Jorryt Matthee, Pascal A. Oesch, Charlie Conroy, David, Sobral, Gabriele Pezzulli, Matthew Hayes, Dawn Erb, Ricardo Amor\'in, Max, Gronke, Daniel Schaerer, Sandro Tacchella, Josephine Kerutt, Ana, Paulino-Afonso, Jo\~ao Calhau, Mario Llerena, Huub R\"ottgering

TL;DR
This study infers high Lyman continuum escape fractions (~50%) in z=2 Lyα emitters by analyzing resolved Lyα profiles, revealing that certain galaxy properties are strongly linked to ionizing photon escape, which is crucial for understanding reionization.
Contribution
It introduces a method to infer LyC escape fractions from Lyα profiles at z=2, identifying key galaxy traits associated with high escape fractions, and suggests these traits are causally connected.
Findings
Half of the sample are leakers with ~50% escape fraction.
Leakers show strong nebular emission and high ionization parameters.
Indicators like O32 can predict escape fractions at high redshift.
Abstract
The ionizing photon escape fraction (LyC ) of star-forming galaxies is the single greatest unknown in the reionization budget. Stochastic sightline effects prohibit the direct separation of LyC leakers from non-leakers at significant redshift. Here we circumvent this uncertainty by inferring with resolved (R>4000) LyA profiles from the X-SHOOTER LyA survey at z=2 (XLS-z2). We select leakers (%) and non-leakers (%) from a representative sample of LyA emitters (LAEs). With median stacked spectra of these subsets covering 1000-8000 {\AA} (rest-frame) we investigate the conditions for LyC . We find the following differences between leakers vs. non-leakers: (i) strong nebular CIV and HeII emission vs. non-detections, (ii) O32~8.5 vs. ~3, (iii) Ha/Hb indicating no dust vs. E(B-V)~0.3, (iv) MgII emission…
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