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SDSS-IV MaStar: a Large, Comprehensive, and High Quality Empirical Stellar Library

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 نشر من قبل Renbin Yan
 تاريخ النشر 2017
  مجال البحث فيزياء
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We introduce the ongoing MaStar project, which is going to construct a large, well-calibrated, high quality empirical stellar library with more than 8000 stars covering the wavelength range from 3622 to 10,354A at a resolution of R~2000, and with better than 3% relative flux calibration. The spectra are taken using hexagonal fiber bundles feeding the BOSS spectrographs on the 2.5m Sloan Foundation Telescope, by piggybacking on the SDSS-IV/APOGEE-2 observations. Compared to previous efforts of empirical libraries, the MaStar Library will have a more comprehensive stellar parameter coverage, especially in cool dwarfs, low metallicity stars, and stars with different [alpha/Fe]. This is achieved by a target selection method based on large spectroscopic catalogs from APOGEE, LAMOST, and SEGUE, combined with photometric selection. This empirical library will provide a new basis for calibrating theoretical spectral libraries and for stellar population synthesis. In addition, with identical spectral coverage and resolution to the ongoing integral field spectroscopy survey of nearby galaxies --- SDSS-IV/MaNGA (Mapping Nearby Galaxies at APO). This library is ideal for spectral modeling and stellar population analysis of MaNGA data.



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We report the stellar atmospheric parameters for 7503 spectra contained in the first release of the MaNGA stellar library (MaStar) in SDSS DR15. The first release of MaStar contains 8646 spectra measured from 3321 unique stars, each covering the wave length range 3622 AA to 10354 AA with a resolving power of $R sim$ 1800. In this work, we first determined the basic stellar parameters: effective temperature ($rm T_{eff}$), surface gravity ($log g$), and metallicity ($rm[Fe/H]$), which best fit the data using an empirical interpolator based on the Medium-resolution Isaac Newton Telescope library of empirical spectra (MILES), as implemented by the University of Lyon Spectroscopic analysis Software (Koleva et al. 2008, ULySS) package. While we analyzed all 8646 spectra from the first release of MaStar, since MaStar has a wider parameter-space coverage than MILES, not all of these fits are robust. In addition, not all parameter regions covered by MILES yield robust results, likely due to the non-uniform coverage of the parameter space by MILES. We tested the robustness of the method using the MILES spectra itself and identified a proxy based on the local density of the training set. With this proxy, we identified 7503 MaStar spectra with robust fitting results. They cover the range from 3179K to 20,517K in effective temperature ($rm T_{eff}$), from 0.40 to 5.0 in surface gravity ($log g$), and from $-$2.49 to $+$0.73 in metallicity ($rm[Fe/H]$).
64 - C. Maraston , L. Hill , D. Thomas 2019
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