Influence of Orbit and Mass Constraints on Reflected Light Characterization of Directly Imaged Rocky Exoplanets
Arnaud Salvador, Tyler D. Robinson, Jonathan J. Fortney, Mark S., Marley

TL;DR
This study investigates how prior knowledge of orbit and mass affects the ability to characterize Earth-like exoplanets through reflected light, highlighting the importance of orbit constraints for size estimation and the limited impact of mass knowledge.
Contribution
It demonstrates that prior orbit information significantly improves planetary radius estimates, while mass constraints have limited effect on atmospheric and size characterization.
Findings
Prior orbit knowledge tightens radius constraints at SNR=20.
Mass knowledge does not significantly improve radius or atmospheric inference.
Detecting Rayleigh scattering helps refine atmospheric composition without mass prior.
Abstract
Survey strategies for upcoming exoplanet direct imaging missions have considered varying assumptions of prior knowledge. Precursor radial velocity surveys could have detected nearby exo-Earths and provided prior orbit and mass constraints. Alternatively, a direct imaging mission performing astrometry could yield constraints on orbit and phase angle of target planets. Understanding the impact of prior mass and orbit information on planetary characterization is crucial for efficiently recognizing habitable exoplanets. To address this question, we use a reflected-light retrieval tool to infer the atmospheric and bulk properties of directly imaged Earth-analogs while considering varying levels of prior information and signal-to-noise ratio (SNR). Because of the strong correlation between the orbit-related parameters and the planetary radius, prior information on the orbital distance and…
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