V* CH Gru , the SIMBAD biblio

V* CH Gru , the SIMBAD biblio (11 results) C.D.S. - SIMBAD4 rel 1.8 - 2024.04.25CEST14:43:58


Sort references on where and how often the object is cited
trying to find the most relevant references on this object.
More on score
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
1981Natur.293..116H 27 26 Automated detection of variable objects on Scmidt plates. HAWKINS M.R.S.
1983Natur.301..688H 1 3 15 Three unusual cataclysmic variable stars. HAWKINS M.R.S.
1990ApJ...356..623H 84 50 High galactic latitude cataclysmic variables. HOWELL S.B. and SZKODY P.
1997PASP..109..345D viz 1017 137 A catalog and atlas of cataclysmic variables-second edition. DOWNES R., WEBBINK R.F. and SHARA M.M.
1997IBVS.4471....1K viz 777 39 The 73rd name-list of variable stars. KAZAROVETS E.V. and SAMUS N.N.
2001PASP..113..764D viz 1714 277 A catalog and atlas of cataclysmic variables: the living edition. DOWNES R.A., WEBBINK R.F., SHARA M.M., et al.
2015MNRAS.446.2251T viz 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.
2019A&A...622A..60C viz 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.
2019AJ....158...16S viz 17       D               1 5775 ~ Identification of RR Lyrae stars in multiband, sparsely sampled data from the Dark Energy Survey using template fitting and random forest classification. STRINGER K.M., LONG J.P., MACRI L.M., et al.
2021ApJ...911..109S viz 17       D               1 7001 17 Identifying RR Lyrae variable stars in six years of the Dark Energy Survey. STRINGER K.M., DRLICA-WAGNER A., MACRI L., et al.
2022ApJS..261...33D viz 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.

goto View the references in ADS