ExoMDN: Rapid characterization of exoplanet interior structures with Mixture Density Networks
Philipp Baumeister, Nicola Tosi

TL;DR
ExoMDN is a machine learning model that rapidly infers exoplanet interior structures from observable parameters, providing full posterior distributions in under a second, thus enabling efficient characterization of exoplanets.
Contribution
We introduce ExoMDN, a novel Mixture Density Network approach trained on extensive synthetic data for fast, probabilistic interior structure inference of exoplanets.
Findings
ExoMDN delivers full posterior distributions in under a second.
It accurately characterizes interior structures of confirmed exoplanets.
Including the Love number $k_2$ reduces degeneracy in interior models.
Abstract
Characterizing the interior structure of exoplanets is essential for understanding their diversity, formation, and evolution. As the interior of exoplanets is inaccessible to observations, an inverse problem must be solved, where numerical structure models need to conform to observable parameters such as mass and radius. This is a highly degenerate problem whose solution often relies on computationally-expensive and time-consuming inference methods such as Markov Chain Monte Carlo. We present ExoMDN, a machine-learning model for the interior characterization of exoplanets based on Mixture Density Networks (MDN). The model is trained on a large dataset of more than 5.6 million synthetic planets below 25 Earth masses consisting of an iron core, a silicate mantle, a water and high-pressure ice layer, and a H/He atmosphere. We employ log-ratio transformations to convert the interior…
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Taxonomy
TopicsStellar, planetary, and galactic studies
