SIMBAD references

2017MNRAS.472.2517J - Mon. Not. R. Astron. Soc., 472, 2517-2533 (2017/December-2)

Climbing the cosmic ladder with stellar twins in RAVE with Gaia.

JOFRE P., TRAVEN G., HAWKINS K., GILMORE G., SANDERS J.L., MADLER T., STEINMETZ M., KUNDER A., KORDOPATIS G., McMILLAN P., BIENAYME O., BLAND-HAWTHORN J., GIBSON B.K., GREBEL E.K., MUNARI U., NAVARRO J., PARKER Q., REID W., SEABROKE G. and ZWITTER T.

Abstract (from CDS):

We apply the twin method to determine parallaxes to 232 545 stars of the RAVE survey using the parallaxes of Gaia DR1 as a reference. To search for twins in this large data set, we apply the t-student stochastic neighbour embedding projection that distributes the data according to their spectral morphology on a two-dimensional map. From this map, we choose the twin candidates for which we calculate a χ2 to select the best sets of twins. Our results show a competitive performance when compared to other model-dependent methods relying on stellar parameters and isochrones. The power of the method is shown by finding that the accuracy of our results is not significantly affected if the stars are normal or peculiar since the method is model free. We find twins for 60 per cent of the RAVE sample that are not contained in Tycho-Gaia Astrometric Solution (TGAS) or that have TGAS uncertainties that are larger than 20 per cent. We could determine parallaxes with typical errors of 28 per cent. We provide a complementary data set for the RAVE stars not covered by TGAS, or that have TGAS uncertainties which are larger than 20 per cent, with model-free parallaxes scaled to the Gaia measurements.

Abstract Copyright: © Published by Oxford University Press on behalf of The Royal Astronomical Society 2017. This work is written by (a) US Government employee(s) and is in the public domain in the US.

Journal keyword(s): methods: statistical - techniques: spectroscopic - stars: distances - stars: distances

Status in Simbad:  waiting for electronic table

Simbad objects: 8

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2019.12.05-16:24:17

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