Double-blind test program for astrometric planet detection with Gaia
S. Casertano (1), M.G. Lattanzi (2), A. Sozzetti (2,3), A. Spagna (2),, S. Jancart (4), R. Morbidelli (2), R. Pannunzio (2), D. Pourbaix (4), D., Queloz (5) ((1) STScI; (2) INAF-Osservatorio Astronomico di Torino; (3)

TL;DR
This study evaluates Gaia's capability to detect and characterize exoplanets through detailed simulations, demonstrating reliable detection limits, parameter estimation accuracy, and the potential for extensive planetary system analysis.
Contribution
The paper introduces a double-blind testing framework with independent software to assess Gaia's exoplanet detection and characterization performance using realistic simulations.
Findings
Planets with signatures about 3 times the measurement error are reliably detected.
Orbital parameters are estimated with 15-20% accuracy near detection limits.
Over 70% of well-separated two-planet systems are correctly identified.
Abstract
We use detailed simulations of the Gaia observations of synthetic planetary systems and develop and utilize independent software codes in double-blind mode to analyze the data, including statistical tools for planet detection and different algorithms for single and multiple Keplerian orbit fitting that use no a priori knowledge of the true orbital parameters of the systems. 1) Planets with astrometric signatures times the single-measurement error and period yr can be detected reliably, with a very small number of false positives. 2) At twice the detection limit, uncertainties in orbital parameters and masses are typically . 3) Over 70% of two-planet systems with well-separated periods in the range yr, , and eccentricity are correctly identified. 4) Favorable orbital…
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