When a Period Is Not a Full Stop: Light Curve Structure Reveals Fundamental Parameters of Cepheid and RR Lyrae Stars
November 25, 2019 ยท Entered Twilight ยท ๐ Monthly notices of the Royal Astronomical Society
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Repo contents: Cepheid_parameters_from_light_curve_structure.pdf, Cepheids.ann, Cepheids.ipynb, README.md, RR_Lyrae.ann, RR_Lyrae.ipynb, catalogs, matplotlibrc
Authors
Earl P. Bellinger, Shashi M. Kanbur, Anupam Bhardwaj, Marcella Marconi
arXiv ID
1911.11767
Category
astro-ph.SR
Cross-listed
astro-ph.IM,
cs.LG
Citations
12
Venue
Monthly notices of the Royal Astronomical Society
Repository
https://github.com/earlbellinger/Cepheid-neural-network
โญ 2
Last Checked
1 month ago
Abstract
The period of pulsation and the structure of the light curve for Cepheid and RR Lyrae variables depend on the fundamental parameters of the star: mass, radius, luminosity, and effective temperature. Here we train artificial neural networks on theoretical pulsation models to predict the fundamental parameters of these stars based on their period and light curve structure. We find significant improvements to estimates of these parameters made using light curve structure and period over estimates made using only the period. Given that the models are able to reproduce most observables, we find that the fundamental parameters of these stars can be estimated up to 60% more accurately when light curve structure is taken into consideration. We quantify which aspects of light curve structure are most important in determining fundamental parameters, and find for example that the second Fourier amplitude component of RR Lyrae light curves is even more important than period in determining the effective temperature of the star. We apply this analysis to observations of hundreds Cepheids in the Large Magellanic Cloud and thousands of RR Lyrae in the Magellanic Clouds and Galactic bulge to produce catalogs of estimated masses, radii, luminosities, and other parameters of these stars. As an example application, we estimate Wesenheit indices and use those to derive distance moduli to the Magellanic Clouds of $ฮผ_{\text{LMC},\text{CEP}} = 18.688 \pm 0.093$, $ฮผ_{\text{LMC},\text{RRL}} = 18.52 \pm 0.14$, and $ฮผ_{\text{SMC},\text{RRL}} = 18.88 \pm 0.17$ mag.
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