The Gaia-ESO Survey: Carbon abundance in the Galactic thin and thick disks
Mariagrazia Franchini, Carlo Morossi, Paolo Di Marcantonio, Miguel, Chavez, Vardan Zh. Adibekyan, Amelia Bayo, Thomas Bensby, Angela Bragaglia,, Francesco Calura, Sonia Duffau, Anais Gonneau, Ulrike Heiter, Georges, Kordopatis, Donatella Romano, Luca Sbordone, Rodolfo Smiljanic

TL;DR
This study investigates the origins of carbon in the Milky Way's thin and thick disks by analyzing elemental abundance trends in over two thousand stars, revealing insights into stellar nucleosynthesis and galactic formation processes.
Contribution
It provides a detailed analysis of carbon abundance patterns in disk stars using Gaia-ESO data, highlighting differences between thin and thick disks and suggesting their formation scenarios.
Findings
Carbon is mainly produced in massive stars like magnesium.
Thick disk stars are older and have different abundance ratios than thin disk stars.
The results support an inside-out and upside-down formation scenario for the Milky Way disks.
Abstract
This paper focuses on carbon that is one of the most abundant elements in the Universe and is of high importance in the field of nucleosynthesis and galactic and stellar evolution. Even nowadays, the origin of carbon and the relative importance of massive and low- to intermediate-mass stars in producing it is still a matter of debate. In this paper we aim at better understanding the origin of carbon by studying the trends of [C/H], [C/Fe],and [C/Mg] versus [Fe/H], and [Mg/H] for 2133 FGK dwarf stars from the fifth Gaia-ESO Survey internal data release (GES iDR5). The availability of accurate parallaxes and proper motions from Gaia DR2 and radial velocities from GES iDR5 allows us to compute Galactic velocities, orbits and absolute magnitudes and, for 1751 stars, ages via a Bayesian approach. Three different selection methodologies have been adopted to discriminate between thin and thick…
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