A Comprehensive Study of Large Scale Structures in the GOODS-SOUTH Field up to z \sim 2.5
S. Salimbeni, M. Castellano, L. Pentericci, D. Trevese, F. Fiore, A., Grazian, A. Fontana, E. Giallongo, K. Boutsia, S.Cristiani, C. De Santis, S., Gallozzi, N. Menci, M. Nonino, D. Paris, P. Santini, and E. Vanzella

TL;DR
This study investigates the properties and distribution of galaxy groups and clusters in the GOODS-South field up to redshift 2.5, revealing environmental effects on galaxy evolution and identifying structures with diverse physical characteristics.
Contribution
It introduces a (2+1)D adaptive density estimation algorithm applied to deep multi-wavelength data, identifying high-redshift structures and analyzing their properties in relation to environment.
Findings
Most identified structures are galaxy groups, with some poor clusters.
High-density regions host more luminous and massive galaxies up to z~2.
The fraction of red galaxies increases with luminosity and density up to z~1.2.
Abstract
The aim of this paper is to identify and study the properties and galactic content of groups and clusters in the GOODS-South field up to z\sim2.5, and to analyse the physical properties of galaxies as a continuous function of environmental density up to high redshift. We use the deep (z850\sim26), multi-wavelength GOODS-MUSIC catalogue, which has a 15% of spectroscopic redshifts and accurate photometric redshifts for the remaining fraction. On these data, we apply a (2+1)D algorithm, previously developed by our group, that provides an adaptive estimate of the 3D density field. We support our analysis with simulations to evaluate the purity and the completeness of the cluster catalogue produced by our algorithm. We find several high density peaks embedded in larger structures in the redshift range 0.4-2.5. From the analysis of their physical properties (mass profile, M200, \sigmav, LX,…
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