The zCOSMOS-SINFONI Project I: Sample Selection and Natural-Seeing Observations
Chiara Mancini, Natascha Foerster Schreiber, Alvio Renzini, Giovanni, Cresci, Erin Hicks, Yingjie Peng, Daniela Vergani, Simon Lilly, C. Marcella, Carollo, Lucia Pozzetti, Gianni Zamorani, Emanuele Daddi, Reinhard Genzel,, Claudia Maraston, Henry J. McCracken, Linda J. Tacconi

TL;DR
This study presents the selection and initial physical characterization of a sample of high-redshift star-forming galaxies observed with near-IR integral field spectroscopy, revealing diverse kinematic states and consistent star formation properties.
Contribution
It introduces a new sample of z~2 star-forming galaxies observed with SINFONI, providing initial physical and kinematic data, and compares these with existing samples and methods.
Findings
Sample is representative of z~2 star-forming galaxies.
Halpha properties are consistent with other studies.
Approximately half the galaxies are rotation-dominated, half dispersion-dominated.
Abstract
The zCOSMOS SINFONI project is aimed at studying the physical and kinematical properties of a sample of massive z~1.4-2.5 star-forming galaxies, through SINFONI near-IR integral field spectroscopy (IFS), combined with the multi-wavelength information from the zCOSMOS (COSMOS) survey. The project is based on 1 hour of natural-seeing observations per target, and Adaptive Optics (AO) follow-up for a major part of the sample, which includes 30 galaxies selected from the zCOSMOS/VIMOS spectroscopic survey. This first paper presents the sample selection, and the global physical characterization of the target galaxies from multicolor photometry, i.e., star formation rate (SFR), stellar mass, age, etc. The Halpha integrated properties such as, flux, velocity dispersion, and size, are derived from the natural-seeing observations, while the follow up AO observations will be presented in the next…
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