TL;DR
ChronoFlow is a data-driven model that leverages a large catalog of stellar rotation data to accurately estimate the ages of star clusters and individual stars, improving gyrochronology techniques.
Contribution
The paper introduces ChronoFlow, a novel flexible model that captures rotational dispersion and improves age estimation accuracy for stars and clusters using a large standardized data catalog.
Findings
Achieves 15% uncertainty in cluster ages
Provides individual stellar ages with 0.7 dex uncertainty
Successfully estimates ages for multiple stellar populations
Abstract
Gyrochronology is a technique for constraining stellar ages using rotation periods, which change over a star's main sequence lifetime due to magnetic braking. This technique shows promise for main sequence FGKM stars, where other methods are imprecise. However, the observed dispersion in rotation rates for similar coeval stars has historically been difficult to characterize. To properly understand this complexity, we have assembled the largest standardized data catalog of rotators in open clusters to date, consisting of 8,000 stars across 30 open clusters/associations spanning ages of 1.5 Myr to 4 Gyr. We have also developed ChronoFlow: a flexible data-driven model which accurately captures observed rotational dispersion. We show that ChronoFlow can be used to accurately forward model rotational evolution, and to infer both cluster and individual stellar ages. We recover…
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