High-redshift Galaxy Formation with Self-consistently Modeled Stars and Massive Black Holes: Stellar Feedback and Quasar Growth
Ji-hoon Kim (1), John H. Wise (2), Tom Abel (3, 4), Yongseok Jo (1),, Joel R. Primack (5), Philip F. Hopkins (6) ((1) Center for Theoretical, Physics, Seoul National University, (2) Center for Relativistic Astrophysics,, Georgia Institute of Technology

TL;DR
This paper presents a comprehensive simulation framework that models stellar and black hole feedback mechanisms to study galaxy and quasar formation at high redshift, revealing complex interactions that influence growth and feedback processes.
Contribution
It introduces a self-consistent, physics-rich simulation framework including radiation and mechanical feedback from stars and black holes, advancing high-redshift galaxy modeling.
Findings
Feedback suppresses runaway star formation in galaxy cores.
Radiation feedback from stars and black holes accelerates black hole growth.
Interactions between gas, stars, and black holes are crucial for understanding early galaxy evolution.
Abstract
As computational resolution of modern cosmological simulations reach ever so close to resolving individual star-forming clumps in a galaxy, a need for "resolution-appropriate" physics for a galaxy-scale simulation has never been greater. To this end, we introduce a self-consistent numerical framework that includes explicit treatments of feedback from star-forming molecular clouds (SFMCs) and massive black holes (MBHs). In addition to the thermal supernovae feedback from SFMC particles, photoionizing radiation from both SFMCs and MBHs is tracked through full 3-dimensional ray tracing. A mechanical feedback channel from MBHs is also considered. Using our framework, we perform a state-of-the-art cosmological simulation of a quasar-host galaxy at z~7.5 for ~25 Myrs with all relevant galactic components such as dark matter, gas, SFMCs, and an embedded MBH seed of ~> 1e6 Ms. We find that…
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