The Gaia-ESO Survey: Preparing the ground for 4MOST & WEAVE galactic surveys. Chemical evolution of lithium with machine learning
S. Nepal, G. Guiglion, R. S. de Jong, M. Valentini, C. Chiappini, M., Steinmetz, M. Ambrosch, E. Pancino, R. D. Jeffries, T. Bensby, D. Romano, R., Smiljanic, M.L.L. Dantas, G. Gilmore, S. Randich, A. Bayo, M. Bergemann, E., Franciosini, F. Jim\'enez-Esteban, P. Jofr\'e

TL;DR
This paper develops a machine learning approach using CNNs to accurately infer stellar parameters and lithium abundances from spectroscopic data, aiding future large-scale galactic surveys.
Contribution
It introduces a CNN trained on Gaia-ESO data to reliably measure lithium and stellar parameters across diverse stellar types, enhancing analysis for upcoming surveys.
Findings
CNN accurately predicts stellar parameters and lithium abundances.
Successful identification of lithium-rich giant stars.
Method is well-suited for future large spectroscopic surveys.
Abstract
With its origin coming from several sources (Big Bang, stars, cosmic rays) and given its strong depletion during its stellar lifetime, the lithium element is of great interest as its chemical evolution in the Milky Way is not well understood at present. To help constrain stellar and galactic chemical evolution models, numerous and precise lithium abundances are necessary for a large range of evolutionary stages, metallicities, and Galactic volume. In the age of stellar parametrization on industrial scales, spectroscopic surveys such as APOGEE, GALAH, RAVE, and LAMOST have used data-driven methods to rapidly and precisely infer stellar labels (atmospheric parameters and abundances). To prepare the ground for future spectroscopic surveys such as 4MOST and WEAVE, we aim to apply machine learning techniques to lithium measurements and analyses. We trained a convolution neural network (CNN),…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research · Gamma-ray bursts and supernovae
