High precision astrometry mission for the detection and characterization of nearby habitable planetary systems with the Nearby Earth Astrometric Telescope (NEAT)
Fabien Malbet, Alain L\'eger, Michael Shao, Renaud Goullioud,, Pierre-Olivier Lagage, Anthony G.A. Brown, Christophe Cara, Gilles Durand,, Carlos Eiroa, Philippe Feautrier, Bj\"orn Jakobsson, Emmanuel Hinglais, Lisa, Kaltenegger, Lucas Labadie, Anne-Marie Lagrange

TL;DR
NEAT is a proposed space mission designed to perform ultra-precise astrometry to detect and characterize Earth-mass exoplanets around nearby stars, aiming to complete a comprehensive census of planetary systems in our neighborhood.
Contribution
This paper introduces the NEAT mission concept, detailing its innovative design and capabilities for high-precision astrometry to discover and analyze Earth-like planets around the closest stars.
Findings
Design of a space-based astrometric system with sub-microarcsecond precision
Capability to detect Earth-mass planets within habitable zones of nearby stars
Potential to determine full orbital parameters and planetary masses
Abstract
(abridged) A complete census of planetary systems around a volume-limited sample of solar-type stars (FGK dwarfs) in the Solar neighborhood with uniform sensitivity down to Earth-mass planets within their Habitable Zones out to several AUs would be a major milestone in extrasolar planets astrophysics. This fundamental goal can be achieved with a mission concept such as NEAT - the Nearby Earth Astrometric Telescope. NEAT is designed to carry out space-borne extremely-high-precision astrometric measurements sufficient to detect dynamical effects due to orbiting planets of mass even lower than Earth's around the nearest stars. Such a survey mission would provide the actual planetary masses and the full orbital geometry for all the components of the detected planetary systems down to the Earth-mass limit. The NEAT performance limits can be achieved by carrying out differential astrometry…
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