Supermassive black holes in cosmological simulations I: M_BH-M_star relation and black hole mass function
Melanie Habouzit, Yuan Li, Rachel S. Somerville, Shy Genel, Annalisa, Pillepich, Marta Volonteri, Romeel Dav\'e, Yetli Rosas-Guevara, Stuart, McAlpine, S\'ebastien Peirani, Lars Hernquist, Daniel Angl\'es-Alc\'azar, Amy, Reines, Richard Bower, Yohan Dubois, Dylan Nelson

TL;DR
This paper compares how different cosmological simulations model supermassive black holes, focusing on the M_BH-M_star relation and black hole mass function, revealing variations and areas needing observational constraints.
Contribution
It systematically analyzes the impact of sub-grid models on black hole properties across multiple simulations, highlighting differences and the importance of low-mass end constraints.
Findings
All simulations predict tight M_BH-M_star relations.
Most simulations overpredict massive black holes (>10^9 Msun).
Low-mass black hole properties are sensitive to feedback models.
Abstract
The past decade has seen significant progress in understanding galaxy formation and evolution using large-scale cosmological simulations. While these simulations produce galaxies in overall good agreement with observations, they employ different sub-grid models for galaxies and supermassive black holes (BHs). We investigate the impact of the sub-grid models on the BH mass properties of the Illustris, TNG100, TNG300, Horizon-AGN, EAGLE, and SIMBA simulations, focusing on the M_BH-M_star relation and the BH mass function. All simulations predict tight M_BH-M_star relations, and struggle to produce the lowest (M_BH< 10^7.5 Msun) in galaxies of M_star~10^10.5-10^11.5 Msun. While the time evolution of the mean M_BH-M_star relation is mild (<1 dex in BH mass for 0<z<5) for all the simulations, its linearity (shape) and normalization varies from simulation to simulation. The strength of SN…
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