APOGEE Net: An expanded spectral model of both low mass and high mass stars
We train a convolutional neural network, APOGEE Net, to predict T_eff, log g, and, for some stars, [Fe/H], based on the APOGEE spectra. This is the first pipeline adapted for these data that is capable of estimating these parameters in a self-consistent manner not only for low mass stars, (such as main sequence dwarfs, pre-main sequence stars, and red giants), but also high mass stars with T_eff in excess of 50,000 K, including hot dwarfs and blue supergiants. The catalog of ~650,000 stars presented in this paper allows for a detailed investigation of the star forming history of not just the Milky Way, but also of the Magellanic clouds, as different type of objects tracing different parts of these galaxies can be more cleanly selected through their distinct placement in T_eff-log g parameter space than in previous APOGEE catalogs produced through different pipelines.
Object Details
Creators/Contributors
- Sprague, Dani - author
- Hutchinson, Brian - contributor
Collection
collections Scholars Week | Conferences and Events
Identifier
1788
Note
Location: Carver Gym (Bellingham, Wash.)
Date Issued
May 18th, 2022 to May 19th, 2022
Language
Resource type
Access conditions
Copying of this document in whole or in part is allowable only for scholarly purposes. It is understood, however, that any copying or publication of this document for commercial purposes, or for financial gain, shall not be allowed without the author's written permission.