Mechanisms Affecting Galaxies Nearby and Environmental Trends (MAGNET)
Benedetta Vulcani (INAF OaPD), Gabriella De Lucia, Daria Zakharova, Paolo Serra, Lizhi Xie, Stefania Barsanti, Bianca Maria Poggianti, Alessia Moretti, Marco Gullieuszik, Yannick Bah\'e, Fabio Fontanot, Jacopo Fritz, Fabio Gastaldello, Massimo Gaspari, Michaela Hirschmann

TL;DR
This paper presents a theoretical framework using the GAEA semi-analytic model to study how various environmental mechanisms influence galaxy evolution at z ~ 0, highlighting the dependence on mass and environment.
Contribution
It introduces a comprehensive analysis of environmental effects on galaxy evolution, emphasizing the role of mergers, tidal interactions, RPS, and starvation across different environments and masses.
Findings
Mergers dominate at high stellar masses (>10.5 log(M*/Msun)).
RPS is prevalent in groups and filaments at intermediate masses (~50%).
Galaxies in groups and filaments grow faster than isolated ones, especially at low masses.
Abstract
[ABRIDGED] Galaxy evolution is shaped by internal and external mechanisms that regulate the baryon cycle and star formation activity. We present a theoretical framework based on the GAlaxy Evolution and Assembly (GAEA) semi-analytic model. We extracted portions of simulated volumes that include isolated galaxies, pairs, group, and filament members at z ~ 0, specifically avoiding massive clusters. Galaxies were classified using both intrinsic (halo-based) and observational (2D projected) parameterizations, reconstructing their environmental histories from z = 2 and identifying mergers, tidal interactions, ram pressure stripping (RPS), and starvation. 2D information decreases isolated and group fractions while doubles pairs. More than half of galaxies remain unaffected by the investigated processes since z = 2. Among affected galaxies, mergers dominate at high stellar masses (40-60% at…
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