TOPoS: IV. Chemical abundances from high-resolution observations of seven EMP stars
P. Bonifacio, E. Caffau, M. Spite, F. Spite, L. Sbordone, L. Monaco,, P. Fran\c{c}ois, B. Plez, P. Molaro, A. J. Gallagher, R. Cayrel, N., Christlieb, R. S. Klessen, A. Koch, H.-G. Ludwig, M. Steffen, S. Zaggia and, C. Abate

TL;DR
This study analyzes seven extremely metal-poor stars using high-resolution spectroscopy to refine their chemical compositions, revealing insights into early stellar populations and the cosmological lithium problem.
Contribution
It provides detailed chemical abundances of seven EMP stars, including lithium and alpha-elements, using both 1D LTE and 3D hydrodynamical models, and discusses implications for early star evolution.
Findings
All seven stars are carbon-enhanced and belong to the low-carbon band.
Lithium was detected in the most iron-poor star and some at [Fe/H]~ -4.0, with implications for the lithium problem.
Stars show low alpha-to-iron ratios and some are Mg-rich, indicating diverse chemical histories.
Abstract
Extremely metal-poor stars provide us with indirect information on the first generations of massive stars. The TOPoS survey has been designed to increase the census of these stars and to provide a chemical inventory that is as detailed as possible. Seven of the most iron-poor stars have been observed with the UVES spectrograph at the ESO VLT Kueyen 8.2m telescope to refine their chemical composition. We analysed the spectra based on 1D LTE model atmospheres, but also used 3D hydrodynamical simulations of stellar atmospheres. We measured carbon in six of the seven stars: all are carbon-enhanced and belong to the low-carbon band, defined in the TOPoS II paper. We measured lithium (A(Li)=1.9) in the most iron-poor star (SDSS J1035+0641, [Fe/H] < -5.2 ). We were also able to measure Li in three stars at [Fe/H]~ -4.0, two of which lie on the Spite plateau. We confirm that SDSS J1349+1407 is…
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