EPJ Web of Conferences (Jan 2017)

Stellar Parameters in an Instant with Machine Learning

  • Bellinger Earl P.,
  • Angelou George C.,
  • Hekker Saskia,
  • Basu Sarbani,
  • Ball Warrick H.,
  • Guggenberger Elisabet

DOI
https://doi.org/10.1051/epjconf/201716005003
Journal volume & issue
Vol. 160
p. 05003

Abstract

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With the advent of dedicated photometric space missions, the ability to rapidly process huge catalogues of stars has become paramount. Bellinger and Angelou et al. [1] recently introduced a new method based on machine learning for inferring the stellar parameters of main-sequence stars exhibiting solar-like oscillations. The method makes precise predictions that are consistent with other methods, but with the advantages of being able to explore many more parameters while costing practically no time. Here we apply the method to 52 so-called “LEGACY“ main-sequence stars observed by the Kepler space mission. For each star, we present estimates and uncertainties of mass, age, radius, luminosity, core hydrogen abundance, surface helium abundance, surface gravity, initial helium abundance, and initial metallicity as well as estimates of their evolutionary model parameters of mixing length, overshooting coeffcient, and diffusion multiplication factor. We obtain median uncertainties in stellar age, mass, and radius of 14.8%, 3.6%, and 1.7%, respectively. The source code for all analyses and for all figures appearing in this manuscript can be found electronically at https://github.com/earlbellinger/asteroseismology