The evolution of galaxy metallicity scaling relations in cosmological hydrodynamical simulations
Maria E. De Rossi (1,2), Tom Theuns (3), Andreea S. Font (4), Ian G., McCarthy (4) ((1) Consejo Nacional de Investigaciones Cientificas y Tecnicas,, CONICET, Argentina, (2) Instituto de Astronomia y Fisica del Espacio, IAFE,, Argentina, (3) Institute for Computational Cosmology

TL;DR
This study uses cosmological simulations to analyze galaxy metallicity relations, comparing them with observations, exploring their evolution, and examining the effects of different enrichment channels and galaxy environments.
Contribution
It provides a detailed analysis of metallicity scaling relations in simulated galaxies, including their evolution and environmental effects, with comparisons to observational data.
Findings
Simulated galaxies match observed local MZR and FMRs over a wide mass range.
Massive galaxies are overpredicted in metallicity, likely due to feedback inefficiencies.
Satellite galaxies have higher metallicities due to gas stripping effects.
Abstract
The evolution of the metal content of galaxies and its relations to other global properties [such as total stellar mass (M*), circular velocity, star formation rate (SFR), halo mass, etc.] provides important constraints on models of galaxy formation. Here we examine the evolution of metallicity scaling relations of simulated galaxies in the Galaxies-Intergalactic Medium Interaction Calculation suite of cosmological simulations. We make comparisons to observations of the correlation of gas-phase abundances with M* (the mass-metallicity relation, MZR), as well as with both M* and SFR or gas mass fraction (the so-called 3D fundamental metallicity relations, FMRs). The simulated galaxies follow the observed local MZR and FMRs over an order of magnitude in M*, but overpredict the metallicity of massive galaxies (log M* > 10.5), plausibly due to inefficient feedback in this regime. We discuss…
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