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ROTSE1 J190058.77+484441.5 , the SIMBAD biblio (32 results) | C.D.S. - SIMBAD4 rel 1.8 - 2024.04.20CEST01:42:20 |
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 |
---|---|---|---|---|---|---|---|---|---|
2000AJ....119.1901A | 14 | D | 1 | 1765 | 300 | ROTSE all-sky surveys for variable stars. I. Test fields. | AKERLOF C., AMROSE S., BALSANO R., et al. | ||
2006AJ....132.1202K | 15 | D | 1185 | 88 | Analysis of RR Lyrae stars in the northern sky variability survey. | KINEMUCHI K., SMITH H.A., WOZNIAK P.R., et al. | |||
2006MNRAS.368.1757W | 617 | 72 | A catalogue of RR Lyrae stars from the Northern Sky Variability Survey. | WILS P., LLOYD C. and BERNHARD K. | |||||
2009AJ....138..466H | 15 | D | 1 | 4126 | 116 | Automated variable star classification using the Northern Sky Variability Survey. | HOFFMAN D.I., HARRISON T.E. and McNAMARA B.J. | ||
2009AcA....59...33P | 15 | D | 1 | 952 | 71 | The All Sky Automated Survey. The Catalog of Variable Stars in the Kepler field of view. | PIGULSKI A., POJMANSKI G., PILECKI B., et al. | ||
2010MNRAS.409.1585B | 131 | D | X C | 3 | 33 | 121 | Flavours of variability: 29 RR Lyrae stars observed with Kepler. | BENKO J.M., KOLENBERG K., SZABO R., et al. | |
2012AJ....144...39L | 15 | D | 1 | 144 | 20 | The all-sky GEOS RR Lyr survey with the TAROT telescopes: analysis of the Blazhko effect. | LE BORGNE J.-F., KLOTZ A., PORETTI E., et al. | ||
2012MNRAS.426.2413B | 15 | D | 1 | 62 | 18 | A search for SX Phe stars among Kepler δ Scuti stars. | BALONA L.A. and NEMEC J.M. | ||
2013A&A...549A.101S | 16 | D | 1 | 242 | 26 | Known Galactic field Blazhko stars. | SKARKA M. | ||
2013ApJ...773..181N | 1030 | D | S X C | 25 | 68 | 131 | Metal abundances, radial velocities, and other physical characteristics for the RR Lyrae stars in the Kepler field. | NEMEC J.M., COHEN J.G., RIPEPI V., et al. | |
2014A&A...562A..90S | 39 | X | 1 | 138 | 19 | Bright Blazhko RRab Lyrae stars observed by ASAS and the SuperWASP surveys. | SKARKA M. | ||
2014AJ....147..119C | 16 | D | 1 | 8010 | 91 | Contamination in the Kepler field. Identification of 685 KOIs as false positives via ephemeris matching based on Q1-Q12 data. | COUGHLIN J.L., THOMPSON S.E., BRYSON S.T., et al. | ||
2014MNRAS.441..715G | 16 | D | 1 | 13079 | 14 | A mid-infrared study of RR Lyrae stars with the Wide-field Infrared Survey Explorer all-sky data release. | GAVRILCHENKO T., KLEIN C.R., BLOOM J.S., et al. | ||
2014ApJS..213...31B | 449 | D | S X C | 10 | 22 | 60 | Long-timescale behavior of the Blazhko effect from rectified Kepler data. | BENKO J.M., PLACHY E., SZABO R., et al. | |
2016ApJ...829...23D | 16 | D | 1 | 4044 | 212 | The Kepler catalog of stellar flares. | DAVENPORT J.R.A. | ||
2016A&A...594A..39F | 16 | D | 1 | 51408 | 86 | Activity indicators and stellar parameters of the Kepler targets. An application of the ROTFIT pipeline to LAMOST-Kepler stellar spectra. | FRASCA A., MOLENDA-ZAKOWICZ J., DE CAT P., et al. | ||
2016ApJS..227...30N | 217 | D | X | 6 | 47 | 4 | The Palomar Transient Factory and RR Lyrae: the metallicity-light curve relation based on ab-type RR Lyrae in the Kepler field. | NGEOW C.-C., YU P.-C., BELLM E., et al. | |
2016AJ....152..181H | 16 | D | 1 | 9279 | 22 | SETI observations of exoplanets with the Allen Telescope Array. | HARP G.R., RICHARDS J., TARTER J.C., et al. | ||
2017MNRAS.466.1290N | 41 | X | 1 | 66 | 14 | Metal-rich SX Phe stars in the Kepler field. | NEMEC J.M., BALONA L.A., MURPHY S.J., et al. | ||
2017A&A...605A..79G | 16 | D | 1 | 735 | 92 | Gaia Data Release 1. Testing parallaxes with local Cepheids and RR Lyrae stars. | GAIA COLLABORATION, CLEMENTINI G., EYER L., et al. | ||
2018MNRAS.473..412B | 99 | D | F | 2 | 37 | 3 | On the connection between almost periodic functions and Blazhko light curves. | BENKO J.M. | |
2018ApJ...864...57M | 16 | D | 1 | 159 | 5 | Chemical compositions of field and globular cluster RR Lyrae stars. I. NGC 3201. | MAGURNO D., SNEDEN C., BRAGA V.F., et al. | ||
2018AJ....156..241H | 16 | D | 1 | 311114 | 199 | A first catalog of variable stars measured by the Asteroid Terrestrial-impact Last Alert System (ATLAS). | HEINZE A.N., TONRY J.L., DENNEAU L., 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. | ||
2019MNRAS.485.5897B | 42 | X | 1 | 35 | 2 | Revisiting the Kepler non-Blazhko RR Lyrae sample: cycle-to-cyle variations and additional modes. | BENKO J.M., JURCSIK J. and DEREKAS A. | ||
2019ApJ...879...69T | 17 | D | 1 | 222609 | 141 | The Payne: self-consistent ab initio fitting of stellar spectra. | TING Y.-S., CONROY C., RIX H.-W., et al. | ||
2020ApJS..247...68L | 17 | D | 1 | 106 | 20 | Probing the Galactic halo with RR Lyrae stars. I. The catalog. | LIU G.-C., HUANG Y., ZHANG H.-W., et al. | ||
2021MNRAS.500.5009M | 17 | D | 1 | 168 | ~ | A theoretical scenario for Galactic RR Lyrae in the Gaia data base: constraints on the parallax offset. | MARCONI M., MOLINARO R., RIPEPI V., et al. | ||
2021AJ....161...95H | 87 | C | 1 | 31 | ~ | Multiwavelength photometry derived from monochromatic Kepler data. | HEDGES C., LUGER R., DOTSON J., et al. | ||
2021ApJ...912..144M | 17 | D | 1 | 2105 | 23 | Metallicity of galactic RR Lyrae from optical and infrared light curves. I. Period-Fourier-Metallicity relations for fundamental-mode RR Lyrae. | MULLEN J.P., MARENGO M., MARTINEZ-VAZQUEZ C.E., et al. | ||
2022AJ....164...45N | 63 | D | X | 2 | 31 | 2 | Evaluating the V-band Photometric Metallicity with Fundamental Mode RR Lyrae in the Kepler Field. | NGEOW C.-C. | |
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. |