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BPS CS 22955-0103 , the SIMBAD biblio (9 results) | C.D.S. - SIMBAD4 rel 1.8 - 2024.04.19CEST04:31:41 |
Bibcode/DOI | Score |
in Title|Abstract| Keywords |
in a table | in teXt, Caption, ... | Nb occurence | Nb objects in ref |
Citations (from ADS) |
Title | First 3 Authors |
---|---|---|---|---|---|---|---|---|---|
1991ApJS...76.1001P | 1762 | 52 | Photoelectric UBV photometry of stars selected in the HK objective-prism survey. | PRESTON G.W., SHECTMAN S.A. and BEERS T.C. | |||||
1992AJ....103..267B | 14 | D | 2 | 754 | 66 | Spectroscopy of hot stars in the galactic halo. | BEERS T.C., PRESTON G.W., SHECTMAN S.A., et al. | ||
1999AJ....117.2329W | 1125 | 45 | Spectroscopy of hot stars in the galactic halo. III. Analysis of a large sample of field horizontal-branch and other A-type stars. | WILHELM R., BEERS T.C., SOMMER-LARSEN J., et al. | |||||
2003A&A...397..899S | 223 | 176 | The mass of the Milky Way: Limits from a newly assembled set of halo objects. | SAKAMOTO T., CHIBA M. and BEERS T.C. | |||||
2015MNRAS.446.2251T | 16 | D | 1 | 10532 | 100 | Discovery of ∼9,000 new RR Lyrae in the southern Catalina surveys. | TORREALBA G., CATELAN M., DRAKE A.J., et al. | ||
2017AJ....153..204S | 16 | D | 1 | 46977 | 123 | Machine-learned identification of RR Lyrae stars from sparse, multi-band data: the PS1 sample. | SESAR B., HERNITSCHEK N., MITROVIC S., et al. | ||
2017ApJ...850...96H | 16 | D | 1 | 13727 | 30 | The geometry of the Sagittarius stream from Pan-STARRS1 3π RR Lyrae. | HERNITSCHEK N., SESAR B., RIX H.-W., et al. | ||
2019A&A...622A..60C | 17 | D | 1 | 150347 | 194 | Gaia Data Release 2. Specific characterisation and validation of all-sky Cepheids and RR Lyrae stars. | CLEMENTINI G., RIPEPI V., MOLINARO R., et al. | ||
2022ApJS..261...33D | 18 | D | 1 | 104673 | 3 | Photometric Metallicity Prediction of Fundamental-mode RR Lyrae Stars in the Gaia Optical and Ks Infrared Wave Bands by Deep Learning. | DEKANY I. and GREBEL E.K. |