ExoMDN: Rapid characterization of exoplanet interior structures with Mixture Density Networks

06/15/2023
by   Philipp Baumeister, et al.
0

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 structure data into a form that the MDN can easily handle. Given mass, radius, and equilibrium temperature, we show that ExoMDN can deliver a full posterior distribution of mass fractions and thicknesses of each planetary layer in under a second on a standard Intel i5 CPU. Observational uncertainties can be easily accounted for through repeated predictions from within the uncertainties. We use ExoMDN to characterize the interior of 22 confirmed exoplanets with mass and radius uncertainties below 10 respectively, including the well studied GJ 1214 b, GJ 486 b, and the TRAPPIST-1 planets. We discuss the inclusion of the fluid Love number k_2 as an additional (potential) observable, showing how it can significantly reduce the degeneracy of interior structures. Utilizing the fast predictions of ExoMDN, we show that measuring k_2 with an accuracy of 10 thickness of core and mantle of an Earth analog to ≈13% of the true values.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/31/2022

Exoplanet Characterization using Conditional Invertible Neural Networks

The characterization of an exoplanet's interior is an inverse problem, w...
research
01/17/2023

Revisiting mass-radius relationships for exoplanet populations: a machine learning insight

The growing number of exoplanet discoveries and advances in machine lear...
research
03/30/2020

Thermophysical modelling and parameter estimation of small solar system bodies via data assimilation

Deriving thermophysical properties such as thermal inertia from thermal ...
research
10/28/2021

Exoplanet atmosphere evolution: emulation with random forests

Atmospheric mass-loss is known to play a leading role in sculpting the d...
research
07/29/2020

Spatially dependent mixture models via the Logistic Multivariate CAR prior

We consider the problem of spatially dependent areal data, where for eac...
research
03/08/2022

Follow the Water: Finding Water, Snow and Clouds on Terrestrial Exoplanets with Photometry and Machine Learning

All life on Earth needs water. NASA's quest to follow the water links wa...
research
09/15/2021

An Improved Approach to Orbital Determination and Prediction of Near-Earth Asteroids: Computer Simulation, Modeling and Test Measurements

In this article, theory-based analytical methodologies of astrophysics e...

Please sign up or login with your details

Forgot password? Click here to reset