Aurora: A Generalised Retrieval Framework for Exoplanetary Transmission Spectra
Luis Welbanks, Nikku Madhusudhan

TL;DR
Aurora is a versatile atmospheric retrieval framework for exoplanets that accommodates diverse compositions, cloud properties, and observational complexities, enabling more accurate characterization of exoplanet atmospheres with current and upcoming data.
Contribution
It introduces a generalized retrieval framework that handles various atmospheric compositions, cloud/haze inhomogeneities, and advanced inference methods, surpassing previous models limited to H-rich atmospheres.
Findings
Robust retrievals for HD209458b demonstrate improved assumptions.
Confident constraints on K218b's atmospheric composition.
Potential to identify main atmospheric components of TRAPPIST1d with JWST data.
Abstract
Atmospheric retrievals of exoplanetary transmission spectra provide important constraints on various properties such as chemical abundances, cloud/haze properties, and characteristic temperatures, at the day-night atmospheric terminator. To date, most spectra have been observed for giant exoplanets due to which retrievals typically assume H-rich atmospheres. However, recent observations of mini-Neptunes/super-Earths, and the promise of upcoming facilities including JWST, call for a new generation of retrievals that can address a wide range of atmospheric compositions and related complexities. Here we report Aurora, a next-generation atmospheric retrieval framework that builds upon state-of-the-art architectures and incorporates the following key advancements: a) a generalised compositional retrieval allowing for H-rich and H-poor atmospheres, b) a generalised prescription for…
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