Exploring Barred Galaxies in the Young Universe at $z\sim$2 Using $\textit{JWST}$ CEERS Data
Keith Pritchett Jr., Shardha Jogee, Yuchen Guo

TL;DR
This study uses JWST CEERS data to analyze how rest-frame wavelength and resolution affect the detection of young barred galaxies at z~2, revealing dust obscuration effects and optimal imaging strategies.
Contribution
It demonstrates the importance of multi-wavelength JWST imaging for detecting and characterizing barred galaxies at high redshift, highlighting the impact of dust and resolution.
Findings
Bar in CEERS-30155 is obscured in UV but visible in NIR images.
Ellipse-fitting detects bars larger than ~1.4 kpc at z~2.
Combining F200W and F444W improves high-redshift barred galaxy detection.
Abstract
Studying barred galaxies at early epochs can shed light on the early evolution of stellar bars, their impact on secular evolution and the star formation activity of young galaxies, and the origins of present-day barred galaxies like the Milky Way. We analyze data from the James Webb Space Telescope (JWST) Cosmic Evolution Early Release Science (CEERS) Survey to explore the impact of rest-frame wavelength and spatial resolution on detecting and characterizing some of the youngest barred galaxies known to date. We apply both visual classification and ellipse-fitting to JWST F115W, F200W, and F444W images of the barred galaxy CEERS-30155 at 2.136, an epoch when the universe was only 22 of its current age. We find that the stellar bar in CEERS-30155 is not visible in the F115W image, which traces rest-frame ultraviolet (UV) light at 2, a rest-frame wavelength highly…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Cosmology and Gravitation Theories · Computational Physics and Python Applications
