Identifying the contributors to cosmic reionization with the Habitable World Observatory: LyC escape calibration in faint galaxies
Annalisa Citro, Cody. A. Carr, Yumi Choi, Sophia. R. Flury, Matthew. J. Hayes, Anne Jaskot, Gagandeep Kaur, Alexandra Le Reste, Matilde Mingozzi, Themiya Nanayakkara, Sally Oey, Claudia. M. Scarlata

TL;DR
This paper proposes using the Habitable Worlds Observatory to calibrate the escape fraction of ionizing photons in faint galaxies, aiming to determine their role in cosmic reionization by extending current measurements to much fainter magnitudes.
Contribution
It introduces a method to calibrate LyC escape fractions in faint galaxies during reionization, significantly expanding the current calibration range with upcoming observatory data.
Findings
Calibration of LyC escape fraction in faint galaxies will clarify their contribution to reionization.
Extended calibration range to magnitudes as faint as 1/100 L* at z~0.1.
Enhanced statistical power with Habitable Worlds Observatory will improve understanding of galaxy roles in reionization.
Abstract
Investigating how small-scale physical processes shape large-scale astrophysical phenomena is one of the key science themes of the Astro2020 decadal Survey. An example of this interplay is Cosmic Reionization, where ionizing photons from galaxies escaped into the intergalactic medium (IGM), driving its transition from neutral to ionized at . Star-forming galaxies are thought to be the dominant sources of reionization. However, an open question remains as to whether bright or faint star-forming galaxies are the primary reionization contributors. This depends on the escape fraction -- the fraction of ionizing photons that successfully escape the galaxy's interstellar and circumgalactic medium to reach the IGM. Performing direct measurements of during the reionization epoch is not feasible, due to the near-zero transmission of the IGM at .…
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