The Gaia-ESO Survey: properties of newly discovered Li-rich giants
R. Smiljanic, E. Franciosini, A. Bragaglia, G. Tautvaisiene, X. Fu, E., Pancino, V. Adibekyan, S. G. Sousa, S. Randich, J. Montalban, L. Pasquini, L., Magrini, A. Drazdauskas, R. A. Garcia, S. Mathur, B. Mosser, C. Regulo, R. de, Assis Peralta, S. Hekker, D. Feuillet

TL;DR
This study reports 20 new lithium-rich giants discovered through Gaia-ESO data, confirming their evolutionary stages with CoRoT, and highlights that evolutionary phase is a key factor in lithium enrichment, with some cases linked to planet engulfment or binary interactions.
Contribution
First identification of Li-rich giants with confirmed evolutionary stages using combined Gaia-ESO and CoRoT data, emphasizing the role of stellar evolution in lithium enrichment.
Findings
Majority of Li-rich giants are near RGB luminosity bump or core-He burning stage.
One giant is super Li-rich with A(Li) = 4.0 dex.
Evolutionary stage is a primary factor in lithium enrichment.
Abstract
We report 20 new lithium-rich giants discovered within the Gaia-ESO Survey, including the first Li-rich giant with evolutionary stage confirmed by CoRoT data. Atmospheric parameters and abundances were derived in model atmosphere analyses using medium-resolution GIRAFFE or high-resolution UVES spectra. These results are part of the fifth internal data release of Gaia-ESO. The Li abundances were corrected for non-LTE effects. We used Gaia DR2 parallaxes to estimate distances and luminosities. The giants have A(Li) > 2.2 dex. The majority of them (14 out of 20 stars) are in the CoRoT fields. Four giants are located in the field of three open clusters but are not members. Two giants were observed in fields towards the Galactic bulge but are likely in the inner disk. One of the bulge field giants is super Li-rich with A(Li) = 4.0 dex. We identified one giant with infrared excess at 22…
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