A Data-Driven Technique for Measuring Stellar Rotation
Abstract
Measuring stellar rotational velocities is a powerful way to probe the many astrophysical phenomena that drive, or are driven by, the evolution of stellar angular momentum. In this paper, we present a novel data-driven approach to measuring the projected rotational velocity, . Rather than directly measuring the broadening of spectral lines, we leverage the large information content of high-resolution spectral data to empirically estimate . We adapt the framework laid down by The Cannon (Ness et al. 2015), which trains a generative model of the stellar flux as a function of wavelength using high-fidelity reference data, and can then produce estimates of stellar parameters and abundances for other stars directly from their spectra. Instead of modeling the flux as a function of wavelength, however, we model the first derivative of the spectra, as we expect the slopes of spectral lines to change as a function of . This technique is computationally efficient and provides a means of rapidly estimating for large numbers of stars in spectroscopic survey data. We analyze SDSS APOGEE spectra, constructing a model informed by high-fidelity stellar parameter estimates derived from high-resolution California Kepler Survey spectra of the same stars. We use the model to estimate up to for APOGEE spectra, in fractions of a second per spectrum. Our estimates agree with the APOGEE estimates to within .
Cite
@article{arxiv.1902.11182,
title = {A Data-Driven Technique for Measuring Stellar Rotation},
author = {Steven Gilhool and Cullen Blake},
journal= {arXiv preprint arXiv:1902.11182},
year = {2019}
}
Comments
26 pages, 10 figures. Accepted for publication in ApJ