TYC 3143-1362-1 , the SIMBAD biblio

TYC 3143-1362-1 , the SIMBAD biblio (9 results) C.D.S. - SIMBAD4 rel 1.8 - 2024.04.17CEST00:55:21


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
2011A&A...534A.125U viz 15       D   O           2 764 297 The Kepler characterization of the variability among A- and F-type stars. I. General overview. UYTTERHOEVEN K., MOYA A., GRIGAHCENE A., et al.
2015MNRAS.449.1401H viz 16       D               1 3011 6 A large sample of metallic-line star candidates from LAMOST Data Release 1. HOU W., LUO A., YANG H., et al.
2016ApJ...829...23D viz 16       D               1 4044 212 The Kepler catalog of stellar flares. DAVENPORT J.R.A.
2016A&A...594A..39F viz 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.
2018A&A...614A..46B viz 16       D               1 1063 5 The envelope of the power spectra of over a thousand δ Scuti stars. The Teff - νmax scaling relation. BARCELO FORTEZA S., ROCA CORTES T. and GARCIA R.A.
2018MNRAS.479..183B viz 16       D               1 2598 17 Gaia luminosities of pulsating A-F stars in the Kepler field. BALONA L.A.
2019MNRAS.485.2380M viz 17       D               1 14330 108 Gaia-derived luminosities of Kepler A/F stars and the pulsator fraction across the δ Scuti instability strip. MURPHY S.J., HEY D., VAN REETH T., et al.
2020A&A...638A..59B viz 17       D               1 2220 17 Unveiling the power spectra of δ Scuti stars with TESS. The temperature, gravity, and frequency scaling relation. BARCELO FORTEZA S., MOYA A., BARRADO D., et al.
2022ApJS..259...63S viz 18       D               1 10264 2 Objective Separation between CP1 and CP2 Based on Feature Extraction with Machine Learning. SHANG L.-H., LUO A.-L., WANG L., et al.

goto View the references in ADS