J-PLUS: Searching for very metal-poor star candidates using the SPEEM pipeline
Carlos Andr\'es Galarza (1), Simone Daflon (1), Vinicius M. Placco, (2), Carlos Allende-Prieto (3, 4), Marcelo Borges Fernandes (1), Haibo, Yuan (5), Carlos L\'opez-Sanjuan (6), Young Sun Lee (7), Enrique Solano (8),, F. Jim\'enez-Esteban (8), David Sobral (9)

TL;DR
This paper demonstrates that the SPEEM machine learning pipeline applied to J-PLUS survey data effectively identifies very metal-poor stars, with a 64% success rate confirmed by spectroscopic follow-up.
Contribution
It introduces a new method combining J-PLUS photometry and SPEEM machine learning to efficiently find low-metallicity star candidates.
Findings
Identified 177 new very metal-poor star candidates.
Spectroscopic follow-up confirmed 64% of candidates as very metal-poor.
SPEEM achieves accurate stellar parameter estimation with small differences from spectroscopic data.
Abstract
We explore the stellar content of the Javalambre Photometric Local Universe Survey (J-PLUS) Data Release 2 and show its potential to identify low-metallicity stars using the Stellar Parameters Estimation based on Ensemble Methods (SPEEM) pipeline. SPEEM is a tool to provide determinations of atmospheric parameters for stars and separate stellar sources from quasars, using the unique J-PLUS photometric system. The adoption of adequate selection criteria allows the identification of metal-poor star candidates suitable for spectroscopic follow-up. SPEEM consists of a series of machine learning models which uses a training sample observed by both J-PLUS and the SEGUE spectroscopic survey. The training sample has temperatures Teff between 4\,800 K and 9\,000 K; between 1.0 and 4.5, and . The performance of the pipeline has been tested with a sample of stars…
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