The Pristine Survey -- XXVII. Journey to the Galactic outskirts -- Mapping the outer halo red giant stars down to the very metal-poor end
Akshara Viswanathan, Amanda Bystr\"om, Else Starkenburg, Anne Foppen, Jill Straat, Martin Montelius, Federico Sestito, Kim A. Venn, Camila Navarrete, Tadafumi Matsuno, Nicolas F. Martin, Guillaume F. Thomas, Anke Ardern-Arentsen, Giuseppina Battaglia, Morgan Fouesneau

TL;DR
This study uses the Pristine survey data to map the outer halo of the Milky Way, identifying very metal-poor stars and their distribution up to 100 kpc, revealing insights into halo composition and accretion history.
Contribution
It provides the first large-scale, unbiased catalog of outer halo red giant stars with reliable distances and metallicities, extending our understanding of the Galaxy's outskirts.
Findings
Photometric distances have ~12% uncertainty.
The PDR1 catalog offers an unbiased view of metallicity versus distance.
Identified 41 stars potentially associated with the Magellanic stream.
Abstract
Context: In the context of Galactic archaeology, the outer halo remains relatively unexplored with respect to its metallicity distribution, merger debris, and the abundance of known very/extremely metal-poor ([Fe/H]<-2.5) stars. Aim: We utilize the Pristine survey's publicly available, Pristine data release 1 (PDR1) and Pristine-Gaia synthetic (PGS) catalogues of photometric metallicities, to select Red Giant Branch (RGB) stars in the outer halo. Methods: The RGB selection pipeline selects giants based on the absence of a well-measured parallax in the brightness range where dwarfs have reasonable parallax estimate from Gaia DR3 data. The photometric distances are calculated using a BaSTI-isochrone fitting code and the photometric metallicities. Results: Photometric distances derived from PDR1- and PGS-giants show typical uncertainties of 12% and a scatter of up to 20% and 40%…
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