Linking galaxy structural properties and star formation activity to black hole activity with IllustrisTNG
Melanie Habouzit, Shy Genel, Rachel S. Somerville, Dale Kocevski,, Michaela Hirschmann, Avishai Dekel, Ena Choi, Dylan Nelson, Annalisa, Pillepich, Paul Torrey, Lars Hernquist, Mark Vogelsberger, Rainer Weinberger,, and Volker Springel

TL;DR
This study uses the IllustrisTNG simulations to explore the relationship between black hole activity, galaxy structure, and star formation, finding good agreement with observations but noting some discrepancies in AGN luminosity distributions.
Contribution
It provides a detailed comparison of simulated and observed galaxy and black hole properties, introducing criteria to classify galaxy types and analyzing their evolution and AGN activity.
Findings
Simulations match observed black hole properties but show excess faint AGN.
Most massive quiescent galaxies experienced compaction before quenching.
AGN fraction peaks in compact star-forming galaxies at z~1.5-2.
Abstract
We study the connection between active galactic nuclei (AGN) and their host galaxies through cosmic time in the large-scale cosmological IllustrisTNG simulations. We first compare BH properties, i.e. the hard X-ray BH luminosity function, AGN galaxy occupation fraction, and distribution of Eddington ratios, to available observational constraints. The simulations produce a population of BHs in good agreement with observations, but we note an excess of faint AGN in hard X-ray (L_x ~ 10^{43-44} erg/s), and a lower number of bright AGN (L_x>10^{44} erg/s), a conclusion that varies quantitatively but not qualitatively with BH luminosity estimation method. The lower Eddington ratios of the 10^{9} Msun BHs compared to observations suggest that AGN feedback may be too efficient in this regime. We study galaxy star formation activity and structural properties, and design sample-dependent…
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