A generative model for Gaia astrometric orbit catalogs: selection functions for binary stars, giant planets, and compact object companions
Abstract
Astrometry from Gaia DR3 has produced a sample of ∼170,000 Keplerian orbital solutions, with many more anticipated in the next few years. These data have enormous potential to constrain the population of binary stars, giant planets, and compact objects in the Solar neighborhood. But in order to use the published orbit catalogs for statistical inference, it is necessary to understand their selection function: what is the probability that a binary with a given set of properties ends up in a catalog? We show that such a selection function for the Gaia DR3 astrometric binary catalog can be forward-modeled from the Gaia scanning law, including individual 1D astrometric measurements, the fitting of a cascade of astrometric models, and quality cuts applied in post-processing. We populate a synthetic Milky Way model with binary stars and generate a mock catalog of astrometric orbits. The mock catalog is quite similar to the DR3 astrometric binary sample, suggesting that our selection function is a sensible approximation of reality. Our fitting also produces a sample of spurious astrometric orbits similar to those found in DR3; these are mainly the result of scan angle-dependent astrometric biases in marginally resolved wide binaries. We show that Gaia's sensitivity to astrometric binaries falls off rapidly at high eccentricities, but only weakly at high inclinations. We predict that DR4 will yield ∼1 million astrometric orbits, mostly for bright (G≲15) systems with long periods (Porb≳1000 d). We provide code to simulate and fit realistic Gaia epoch astrometry for any data release and determine whether any hypothetical binary would receive a cataloged orbital solution.
Acknowledgement
We thank the referee for helpful suggestions that improved the manuscript. This research was supported by
NSF grant AST-2307232 and donations from Isaac Malsky. C.Y.L. acknowledges support from the Harrison and
Carnegie Fellowships. HWR acknowledges support from the European Research Council for the ERC Advanced
Grant [101054731].
This work has made use of data from the European Space Agency (ESA) mission Gaia, processed by the Gaia Data Processing and Analysis Consortium (DPAC, https://www.cosmos.esa.int/web/gaia/dpac/consortium). Funding for the DPAC has been provided by national institutions, in particular the institutions participating in the Gaia Multilateral
Agreement.
Files
Name | Size | Download all |
---|---|---|
md5:ed4006d428cb91c68ab0a8f2e77bb3d5
|
10.4 MB | Preview Download |
Additional details
- National Science Foundation
- AST-2307232
- European Research Council
- ERC Advanced Grant 101054731
- Submitted
-
2024-11-04Submitted paper
- Publication Status
- Submitted