The SkyMapper DR1.1 Search for Extremely Metal-Poor Stars
G. S. Da Costa, M. S. Bessell, A. D. Mackey, T. Nordlander, M., Asplund, A. R. Casey, A. Frebel, K. Lind, A. F. Marino, S. J. Murphy, J. E., Norris, B. P. Schmidt, and D. Yong

TL;DR
This study uses SkyMapper DR1.1 photometry and low-resolution spectroscopy to efficiently identify extremely metal-poor stars in the southern sky, revealing their properties and distribution, and highlighting selection biases.
Contribution
It introduces a photometric selection method combined with spectroscopic follow-up to find and analyze extremely metal-poor stars, including the most metal-poor known candidates.
Findings
41% of candidates with [Fe/H] ≤ -2.75 have [Fe/H] ≤ -2.75
Most observed stars are carbon-normal with [C/Fe] ≤ +1
Metallicity distribution drops sharply at [Fe/H] ≈ -4.2
Abstract
We present and discuss the results of a search for extremely metal-poor stars based on photometry from data release DR1.1 of the SkyMapper imaging survey of the southern sky. In particular, we outline our photometric selection procedures and describe the low-resolution ( 3000) spectroscopic follow-up observations that are used to provide estimates of effective temperature, surface gravity and metallicity ([Fe/H]) for the candidates. The selection process is very efficient: of the 2618 candidates with low-resolution spectra that have photometric metallicity estimates less than or equal to -2.0, 41% have [Fe/H] -2.75 and only 7% have [Fe/H] -2.0 dex. The most metal-poor candidate in the sample has [Fe/H] -4.75 and is notably carbon-rich. Except at the lowest metallicities ([Fe/H] -4), the stars observed spectroscopically are dominated by a…
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