Decoding Starlight with Big Survey Data, Machine Learning, and Cosmological Simulations
Kirsten Blancato

TL;DR
This paper leverages large survey data, machine learning, and cosmological simulations to decode stellar signatures, advancing understanding of galaxy evolution and stellar physics through innovative analysis methods.
Contribution
It introduces new approaches to determine stellar properties from variability data and synthesizes simulations and observations to enhance insights into galactic formation.
Findings
New methods for deriving stellar rotation and surface gravity from variability.
Insights into the chemical enrichment history of the Milky Way.
Identification of tensions between observational data and theoretical models.
Abstract
Stars, and collections of stars, encode rich signatures of stellar physics and galaxy evolution. With properties influenced by both their environment and intrinsic nature, stars retain information about astrophysical phenomena that are not otherwise directly observable. In the time-domain, the observed brightness variability of a star can be used to investigate physical processes occurring at the stellar surface and in the stellar interior. On a galactic scale, the properties of stars, including chemical abundances and stellar ages, serve as a multi-dimensional record of the origin of the galaxy. In the Milky Way, together with orbital properties, this informs the details of the evolution of our Galaxy since its formation. Extending beyond the Local Group, the attributes of unresolved stellar populations allow us to study the diversity of galaxies in the Universe. By examining the…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Stellar, planetary, and galactic studies · Astronomical Observations and Instrumentation
