Back to Search Start Over

The GALAH Survey: A New Sample of Extremely Metal-Poor Stars Using A Machine Learning Classification Algorithm

Authors :
Hughes, Arvind C. N.
Spitler, Lee R.
Zucker, Daniel B.
Nordlander, Thomas
Simpson, Jeffrey
Da Costa, Gary S.
Ting, Yuan-Sen
Li, Chengyuan
Bland-Hawthorn, Joss
Buder, Sven
Casey, Andrew R.
De Silva, Gayandhi M.
D'Orazi, Valentina
Freeman, Ken C.
Hayden, Michael R.
Kos, Janez
Lewis, Geraint F.
Lin, Jane
Lind, Karin
Martell, Sarah L.
Schlesinger, Katharine J.
Sharma, Sanjib
Zwitter, Tomaz
Collaboration, The GALAH
Publication Year :
2022

Abstract

Extremely Metal-Poor (EMP) stars provide a valuable probe of early chemical enrichment in the Milky Way. Here we leverage a large sample of $\sim600,000$ high-resolution stellar spectra from the GALAH survey plus a machine learning algorithm to find 54 candidates with estimated [Fe/H]~$\leq$~-3.0, 6 of which have [Fe/H]~$\leq$~-3.5. Our sample includes $\sim 20 \%$ main sequence EMP candidates, unusually high for \emp surveys. We find the magnitude-limited metallicity distribution function of our sample is consistent with previous work that used more complex selection criteria. The method we present has significant potential for application to the next generation of massive stellar spectroscopic surveys, which will expand the available spectroscopic data well into the millions of stars.<br />Comment: 27 pages, 20 figures, accepted for publication in ApJ, candidate table available at this https://github.com/arvhug/GALAH---TSNE_EMP

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2203.10843
Document Type :
Working Paper
Full Text :
https://doi.org/10.3847/1538-4357/ac5fa7