Observational Properties of Simulated Galaxies in Overdense and Average Regions at High Redshifts z= 6-12
Hidenobu Yajima (1), Isaac Shlosman (2, 3), Emilio Romano-Diaz (4),, Kentaro Nagamine (3, 5) ((1) Tohoku University, Japan, (2) University of, Kentucky, USA, (3) Osaka University, Japan (4) University of Bonn, Germany,, (5) University of Nevada, Las Vegas, USA)

TL;DR
This study uses advanced simulations to analyze the properties of high-redshift galaxies in overdense and average regions, revealing differences in galaxy growth, dust content, and luminosity functions, with implications for future ALMA observations.
Contribution
It provides new insights into galaxy evolution at high redshifts by comparing overdense and average regions using detailed radiation transfer simulations.
Findings
Overdense regions host more massive, dust-rich, and luminous galaxies.
Star formation rates correlate with stellar mass, increasing slowly with mass.
Dust absorption affects UV escape fractions, influencing observable properties.
Abstract
We use high-resolution zoom-in cosmological simulations of galaxies of Romano-Diaz et al., post-processing them with a panchromatic three-dimensional radiation transfer code to obtain the galaxy UV luminosity function (LF) at z ~ 6-12. The galaxies are followed in a rare, heavily overdense region within a ~ 5-sigma density peak, which can host high-z quasars, and in an average density region, down to the stellar mass of M_star ~ 4* 10^7 Msun. We find that the overdense regions evolve at a substantially accelerated pace --- the most massive galaxy has grown to M_star ~ 8.4*10^10 Msun by z = 6.3, contains dust of M_dust~ 4.1*10^8 Msun, and is associated with a very high star formation rate, SFR ~ 745 Msun/yr.The attained SFR-M_star correlation results in the specific SFR slowly increasing with M_star. Most of the UV radiation in massive galaxies is absorbed by the dust, its escape…
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