2021A&A...647A.125B


Query : 2021A&A...647A.125B

2021A&A...647A.125B - Astronomy and Astrophysics, volume 647A, 125-125 (2021/3-1)

ROOSTER: a machine-learning analysis tool for Kepler stellar rotation periods.

BRETON S.N., SANTOS A.R.G., BUGNET L., MATHUR S., GARCIA R.A. and PALLE P.L.

Abstract (from CDS):

In order to understand stellar evolution, it is crucial to efficiently determine stellar surface rotation periods. Indeed, while they are of great importance in stellar models, angular momentum transport processes inside stars are still poorly understood today. Surface rotation, which is linked to the age of the star, is one of the constraints needed to improve the way those processes are modelled. Statistics of the surface rotation periods for a large sample of stars of different spectral types are thus necessary. An efficient tool to automatically determine reliable rotation periods is needed when dealing with large samples of stellar photometric datasets. The objective of this work is to develop such a tool. For this purpose, machine learning classifiers constitute relevant bases to build our new methodology. Random forest learning abilities are exploited to automate the extraction of rotation periods in Kepler light curves. Rotation periods and complementary parameters are obtained via three different methods: a wavelet analysis, the autocorrelation function of the light curve, and the composite spectrum. We trained three different classifiers: one to detect if rotational modulations are present in the light curve, one to flag close binary or classical pulsators candidates that can bias our rotation period determination, and finally one classifier to provide the final rotation period. We tested our machine learning pipeline on 23 431 stars of the Kepler K and M dwarf reference rotation catalogue for which 60% of the stars have been visually inspected. For the sample of 21707 stars where all the input parameters are provided to the algorithm, 94.2% of them are correctly classified (as rotating or not). Among the stars that have a rotation period in the reference catalogue, the machine learning provides a period that agrees within 10% of the reference value for 95.3% of the stars. Moreover, the yield of correct rotation periods is raised to 99.5% after visually inspecting 25.2% of the stars. Over the two main analysis steps, rotation classification and period selection, the pipeline yields a global agreement with the reference values of 92.1% and 96.9% before and after visual inspection. Random forest classifiers are efficient tools to determine reliable rotation periods in large samples of stars. The methodology presented here could be easily adapted to extract surface rotation periods for stars with different spectral types or observed by other instruments such as K2, TESS or by PLATO in the near future.

Abstract Copyright: © S. N. Breton et al. 2021

Journal keyword(s): methods: data analysis - stars: solar-type - stars: activity - stars: rotation - starspots

Simbad objects: 3

goto Full paper

goto View the references in ADS

Number of rows : 3
N Identifier Otype ICRS (J2000)
RA
ICRS (J2000)
DEC
Mag U Mag B Mag V Mag R Mag I Sp type #ref
1850 - 2024
#notes
1 2MASS J19045237+3738134 Ro* 19 04 52.3750306176 +37 38 13.436477088           ~ 13 0
2 UCAC4 635-070141 * 19 27 01.6485671424 +36 52 28.310764548   15.829 14.835 14.365   ~ 2 0
3 NAME Cyg-Lyr Filament ? ~ ~           ~ 13 0

To bookmark this query, right click on this link: simbad:objects in 2021A&A...647A.125B and select 'bookmark this link' or equivalent in the popup menu