Supermassive black holes in cosmological simulations II: the AGN population and predictions for upcoming X-ray missions
Melanie Habouzit, Rachel S. Somerville, Yuan Li, Shy Genel, James, Aird, Daniel Angl\'es-Alc\'azar, Romeel Dav\'e, Iskren Y. Georgiev, Stuart, McAlpine, Yetli Rosas-Guevara, Yohan Dubois, Dylan Nelson, Eduardo Ba\~nados,, Lars Hernquist, S\'ebastien Peirani, Mark Vogelsberger

TL;DR
This paper compares AGN populations in various large-scale cosmological simulations, highlighting discrepancies with observations and predicting the impact of upcoming X-ray missions on detecting faint AGN.
Contribution
It provides a comprehensive comparison of AGN populations across multiple simulations and discusses implications for future X-ray observations and simulation modeling.
Findings
Simulations show significant variation in AGN luminosity functions.
Most simulations produce too many moderate-luminosity AGN at high redshift.
Predicted detectable AGN numbers vary widely among simulations for future surveys.
Abstract
In large-scale hydrodynamical cosmological simulations, the fate of massive galaxies is mainly dictated by the modeling of feedback from active galactic nuclei (AGN). The amount of energy released by AGN feedback is proportional to the mass that has been accreted onto the BHs, but the exact sub-grid modeling of AGN feedback differs in all simulations. Whilst modern simulations reliably produce populations of quiescent massive galaxies at z<2, it is also crucial to assess the similarities and differences of the responsible AGN populations. Here, we compare the AGN population of the Illustris, TNG100, TNG300, Horizon-AGN, EAGLE, and SIMBA simulations. The AGN luminosity function (LF) varies significantly between simulations. Although in agreement with current observational constraints at z=0, at higher redshift the agreement of the LFs deteriorates with most simulations producing too many…
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