What do simulations predict for the galaxy stellar mass function and its evolution in different environments?
B. Vulcani (1), G. De Lucia (2), B. M. Poggianti (3), K. Bundy (1), S., More (1), R. Calvi (4) ((1) Kavli Institute for the Physics and, Mathematics of the Universe (WPI), Todai Institutes for Advanced Study, the, University of Tokyo

TL;DR
This paper compares observed galaxy stellar mass functions with predictions from semi-analytic models applied to simulations, revealing discrepancies in low-mass galaxy counts and environmental effects, and highlighting areas for model improvement.
Contribution
It identifies specific shortcomings in current semi-analytic models regarding environmental effects and early galaxy formation, and compares different modeling approaches.
Findings
Models over-predict low-mass galaxies at certain redshifts.
Mass functions depend on halo mass, with massive halos hosting more massive galaxies.
Simulations show evolution in massive galaxy counts across environments.
Abstract
We present a comparison between the observed galaxy stellar mass function and the one predicted from the De Lucia & Blaizot (2007) semi-analytic model applied to the Millennium Simulation, for cluster satellites and galaxies in the field (meant as a wide portion of the sky, including all environments), in the local universe (z~0.06) and at intermediate redshift (z~0.6), with the aim to shed light on the processes which regulate the mass distribution in different environments. While the mass functions in the field and in its finer environments (groups, binary and single systems) are well matched in the local universe down to the completeness limit of the observational sample, the model over-predicts the number of low mass galaxies in the field at z~0.6 and in clusters at both redshifts. Above M_*=10^10.25 M_sun, it reproduces the observed similarity of the cluster and field mass…
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