Impact of star formation models on the growth of simulated galaxies at high redshifts
Cheonsu Kang, Taysun Kimm, Daniel Han, Harley Katz, Julien Devriendt,, Adrianne Slyz, Romain Teyssier

TL;DR
This study compares two star formation models in high-redshift galaxy simulations, revealing that the choice of model significantly affects galaxy growth, outflows, and star formation burstiness, with implications for galaxy evolution modeling.
Contribution
It introduces a comparative analysis of star formation models in cosmological simulations, highlighting the impact of small-scale physics on galaxy evolution at high redshifts.
Findings
Sink particle model produces more bursty star formation.
Higher supernova energy amplifies differences between models.
Star formation modeling influences galaxy outflows and growth.
Abstract
Star formation is a key process that governs the baryon cycle within galaxies, however, the question of how it controls their growth remains elusive due to modeling uncertainties. To understand the impact of star formation models on galaxy evolution, we performed cosmological zoom-in radiation-hydrodynamic simulations of a dwarf dark matter halo, with a virial mass of at . We compared two different star formation models: a multi-freefall model combined with a local gravo-thermo-turbulent condition and a more self-consistent model based on a sink particle algorithm, where gas accretion and star formation are directly controlled by the gas kinematics. As the first study in this series, we used cosmological zoom-in simulations with different spatial resolutions and found that star formation is more bursty in the runs with the sink algorithm,…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Galaxies: Formation, Evolution, Phenomena
