Revealing the Milky Way’s most recent major merger with a Gaia EDR3 catalogue of machine-learned line-of-sight velocities

Author:

Dropulic Adriana1ORCID,Liu Hongwan12,Ostdiek Bryan34ORCID,Lisanti Mariangela15

Affiliation:

1. Department of Physics, Princeton University , Princeton, NJ 08544, USA

2. Center for Cosmology & Particle Physics, Department of Physics, New York University , New York, NY 10003, USA

3. Department of Physics, Harvard University , Cambridge, MA 02138, USA

4. The NSF AI Institute for Artificial Intelligence and Fundamental Interactions , Cambridge, MA 02139, USA

5. Center for Computational Astrophysics, Flatiron Institute , 162 Fifth Ave, New York, NY 10010, USA

Abstract

ABSTRACT Machine learning can play a powerful role in inferring missing line-of-sight velocities from astrometry in surveys such as Gaia. In this paper, we apply a neural network to Gaia Early Data Release 3 (EDR3) and obtain line-of-sight velocities and associated uncertainties for ∼92 million stars. The network, which takes as input a star’s parallax, angular coordinates, and proper motions, is trained and validated on ∼6.4 million stars in Gaia with complete phase-space information. The network’s uncertainty on its velocity prediction is a key aspect of its design; by properly convolving these uncertainties with the inferred velocities, we obtain accurate stellar kinematic distributions. As a first science application, we use the new network-completed catalogue to identify candidate stars that belong to the Milky Way’s most recent major merger, Gaia-Sausage-Enceladus (GSE). We present the kinematic, energy, angular momentum, and spatial distributions of the ∼450 000 GSE candidates in this sample, and also study the chemical abundances of those with cross matches to GALAH and APOGEE. The network’s predictive power will only continue to improve with future Gaia data releases as the training set of stars with complete phase-space information grows. This work provides a first demonstration of how to use machine learning to exploit high-dimensional correlations on data to infer line-of-sight velocities, and offers a template for how to train, validate, and apply such a neural network when complete observational data is not available.

Funder

National Science Foundation

Simons Foundation

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

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