The Tully-Fisher relation in dense groups at $z \sim 0.7$ in the MAGIC survey
Valentina Abril-Melgarejo, Beno\^it Epinat, Wilfried Mercier, Thierry, Contini, Leindert A. Boogaard, Jarle Brinchmann, Hayley Finley, L\'eo, Michel-Dansac, Emmy Ventou, Philipe Amram, Davor Krajnovi\'c, Guillaume, Mahler, Juan C. B. Pineda, Johan Richard

TL;DR
This study investigates how dense environments at redshift around 0.7 influence galaxy evolution by analyzing the Tully-Fisher relation, revealing environmental effects on stellar mass, rotation velocity, and mass fractions in galaxies.
Contribution
It provides new insights into environmental impacts on galaxy kinematics and mass content at intermediate redshift using a robust morpho-kinematic analysis of group galaxies.
Findings
Significant TFR zero-point offset between low- and high-density environments.
Stellar and baryon mass fractions increase with stellar mass, not exceeding 50%.
Environmental effects may cause a decrease in star formation or a contraction of mass distribution.
Abstract
Galaxies in dense environments are subject to interactions and mechanisms which directly affect their evolution by lowering their gas fractions and reducing their star-forming capacity earlier than their isolated counterparts. The aim of our project is to get new insights about the role of environment on the stellar and baryonic content of galaxies using a kinematic approach, through the study of the Tully-Fisher relation (TFR). We study a sample of galaxies in 8 groups spanning a redshift range of and located in 10 pointings of the MAGIC MUSE Guaranteed Time Observations program. We perform a morpho-kinematics analysis of this sample and set up a selection based on galaxy size, [OII] emission line doublet signal-to-noise ratio, bulge-to-disk ratio and nuclear activity to construct a robust kinematic sample of 67 star-forming galaxies. This selection considerably reduces the…
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