The Zurich Environmental Study (ZENS) of Galaxies in Groups along the Cosmic Web. II. Galaxy Structural Measurements and the Concentration of Morphologically Classified Satellites in Diverse Environments
A. Cibinel, C. M. Carollo, S. J. Lilly, F. Miniati, J. D. Silverman,, J. H. van Gorkom, E. Cameron, A. Finoguenov, P. Norberg, Y. Peng, A. Pipino,, C. S. Rudick

TL;DR
This study analyzes how galaxy structure and concentration depend on environment and morphology in galaxy groups, revealing that satellite galaxy concentration correlates with stellar mass and group mass, with minimal environmental dependence.
Contribution
It provides detailed structural measurements and a new morphological classification method for galaxies in groups, highlighting environmental effects on galaxy concentration and structure.
Findings
Galaxy concentration increases with stellar mass, especially for later types.
Disk satellites are more concentrated in higher mass groups.
Environmental effects on concentration are modest compared to mass dependence.
Abstract
We present structural measurements for the galaxies in the 0.05<z<0.0585 groups of the Zurich Environmental Study, aimed at establishing how galaxy properties depend on four environmental parameters: group halo mass M_GROUP, group-centric distance R/R_200, ranking into central or satellite, and large-scale structure density delta_LSS. Global galaxy structure is quantified both parametrically and non-parametrically. We correct all these measurements for observational biases due to PSF blurring and surface brightness effects as a function of galaxy size, magnitude, steepness of light profile and ellipticity. Structural parameters are derived also for bulges, disks and bars. We use the galaxy bulge-to-total ratios (B/T), together with the calibrated non-parametric structural estimators, to implement a quantitative morphological classification that maximizes purity in the resulting…
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