Exoplanet Characterization using Conditional Invertible Neural Networks

01/31/2022
โˆ™
by   Jonas Haldemann, et al.
โˆ™
0
โˆ™

The characterization of an exoplanet's interior is an inverse problem, which requires statistical methods such as Bayesian inference in order to be solved. Current methods employ Markov Chain Monte Carlo (MCMC) sampling to infer the posterior probability of planetary structure parameters for a given exoplanet. These methods are time consuming since they require the calculation of a large number of planetary structure models. To speed up the inference process when characterizing an exoplanet, we propose to use conditional invertible neural networks (cINNs) to calculate the posterior probability of the internal structure parameters. cINNs are a special type of neural network which excel in solving inverse problems. We constructed a cINN using FrEIA, which was then trained on a database of 5.6ยท 10^6 internal structure models to recover the inverse mapping between internal structure parameters and observable features (i.e., planetary mass, planetary radius and composition of the host star). The cINN method was compared to a Metropolis-Hastings MCMC. For that we repeated the characterization of the exoplanet K2-111 b, using both the MCMC method and the trained cINN. We show that the inferred posterior probability of the internal structure parameters from both methods are very similar, with the biggest differences seen in the exoplanet's water content. Thus cINNs are a possible alternative to the standard time-consuming sampling methods. Indeed, using cINNs allows for orders of magnitude faster inference of an exoplanet's composition than what is possible using an MCMC method, however, it still requires the computation of a large database of internal structures to train the cINN. Since this database is only computed once, we found that using a cINN is more efficient than an MCMC, when more than 10 exoplanets are characterized using the same cINN.

READ FULL TEXT

page 12

page 14

research
โˆ™ 06/15/2023

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

Characterizing the interior structure of exoplanets is essential for und...
research
โˆ™ 08/20/2018

Inverse Problems in Asteroseismology

Asteroseismology allows us to probe the internal structure of stars thro...
research
โˆ™ 10/09/2022

Strong Gravitational Lensing Parameter Estimation with Vision Transformer

Quantifying the parameters and corresponding uncertainties of hundreds o...
research
โˆ™ 07/29/2021

Efficiently resolving rotational ambiguity in Bayesian matrix sampling with matching

A wide class of Bayesian models involve unidentifiable random matrices t...
research
โˆ™ 06/10/2023

Bayesian Inverse Contextual Reasoning for Heterogeneous Semantics-Native Communication

This work deals with the heterogeneous semantic-native communication (SN...
research
โˆ™ 08/11/2023

Target Detection on Hyperspectral Images Using MCMC and VI Trained Bayesian Neural Networks

Neural networks (NN) have become almost ubiquitous with image classifica...

Please sign up or login with your details

Forgot password? Click here to reset