SIMBAD references

2018MNRAS.475.3633W - Mon. Not. R. Astron. Soc., 475, 3633-3643 (2018/April-2)

Mass and age of red giant branch stars observed with LAMOST and Kepler.

WU Y., XIANG M., BI S., LIU X., YU J., HON M., SHARMA S., LI T., HUANG Y., LIU K., ZHANG X., LI Y., GE Z., TIAN Z., ZHANG J. and ZHANG J.

Abstract (from CDS):

Obtaining accurate and precise masses and ages for large numbers of giant stars is of great importance for unraveling the assemblage history of the Galaxy. In this paper, we estimate masses and ages of 6940 red giant branch (RGB) stars with asteroseismic parameters deduced from Kepler photometry and stellar atmospheric parameters derived from LAMOST spectra. The typical uncertainties of mass is a few per cent, and that of age is ∼20 per cent. The sample stars reveal two separate sequences in the age-[α/Fe] relation - a high-α sequence with stars older than ∼8 Gyr and a low-α sequence composed of stars with ages ranging from younger than 1 Gyr to older than 11 Gyr. We further investigate the feasibility of deducing ages and masses directly from LAMOST spectra with a machine learning method based on kernel based principal component analysis, taking a sub-sample of these RGB stars as a training data set. We demonstrate that ages thus derived achieve an accuracy of ∼24 per cent. We also explored the feasibility of estimating ages and masses based on the spectroscopically measured carbon and nitrogen abundances. The results are quite satisfactory and significantly improved compared to the previous studies.

Abstract Copyright: © 2017 The Author(s) Published by Oxford University Press on behalf of the Royal Astronomical Society

Journal keyword(s): asteroseismology - stars: evolution - stars: fundamental parameters

VizieR on-line data: <Available at CDS (J/MNRAS/475/3633): table1.dat>

Simbad objects: 3727

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2023.03.30-22:41:47

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