Navigation überspringen
Universitätsbibliothek Heidelberg
Status: Bibliographieeintrag

Verfügbarkeit
Standort: ---
Exemplare: ---
heiBIB
 Online-Ressource
Verfasst von:Haldemann, Jonas [VerfasserIn]   i
 Ksoll, Victor F. [VerfasserIn]   i
 Walter, Daniel [VerfasserIn]   i
 Alibert, Yann [VerfasserIn]   i
 Klessen, Ralf S. [VerfasserIn]   i
 Benz, Willy [VerfasserIn]   i
 Köthe, Ullrich [VerfasserIn]   i
 Ardizzone, Lynton [VerfasserIn]   i
 Rother, Carsten [VerfasserIn]   i
Titel:Exoplanet characterization using conditional invertible neural networks
Verf.angabe:Jonas Haldemann, Victor Ksoll, Daniel Walter, Yann Alibert, Ralf S. Klessen, Willy Benz, Ullrich Koethe, Lynton Ardizzone, and Carsten Rother
E-Jahr:2023
Jahr:20 April 2023
Umfang:16 S.
Fussnoten:Gesehen am 29.06.2023
Titel Quelle:Enthalten in: Astronomy and astrophysics
Ort Quelle:Les Ulis : EDP Sciences, 1969
Jahr Quelle:2023
Band/Heft Quelle:672(2023) vom: Apr., Artikel-ID A180, Seite 1-16
ISSN Quelle:1432-0746
Abstract:Context. The characterization of the interior of an exoplanet is an inverse problem. The solution requires statistical methods such as Bayesian inference. Current methods employ Markov chain Monte Carlo (MCMC) sampling to infer the posterior probability of the planetary structure parameters for a given exoplanet. These methods are time-consuming because they require the evaluation of a planetary structure model ~105 times. Aims. To speed up the inference process when characterizing an exoplanet, we propose to use conditional invertible neural networks to calculate the posterior probability of the planetary structure parameters.Methods. Conditional invertible neural networks (cINNs) are a special type of neural network that excels at solving inverse problems. We constructed a cINN following the framework for easily invertible architectures (FreIA). This neural network was then trained on a database of 5.6 × 106 internal structure models to recover the inverse mapping between internal structure parameters and observable features (i.e., planetary mass, planetary radius, and elemental composition of the host star). We also show how observational uncertainties can be accounted for. Results. The cINN method was compared to a commonly used Metropolis-Hastings MCMC. To do this, 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 distributions of the internal structure parameters from both methods are very similar; the largest differences are seen in the exoplanet water content. Thus, cINNs are a possible alternative to the standard time-consuming sampling methods. cINNs allow infering the composition of an exoplanet that is orders of magnitude faster than what is possible using an MCMC method. The computation of a large database of internal structures to train the neural network is still required, however. Because this database is only computed once, we found that using an invertible neural network is more efficient than an MCMC when more than ten exoplanets are characterized using the same neural network.
DOI:doi:10.1051/0004-6361/202243230
URL:Bitte beachten Sie: Dies ist ein Bibliographieeintrag. Ein Volltextzugriff für Mitglieder der Universität besteht hier nur, falls für die entsprechende Zeitschrift/den entsprechenden Sammelband ein Abonnement besteht oder es sich um einen OpenAccess-Titel handelt.

kostenfrei: Volltext: https://doi.org/10.1051/0004-6361/202243230
 kostenfrei: Volltext: https://www.aanda.org/articles/aa/abs/2023/04/aa43230-22/aa43230-22.html
 DOI: https://doi.org/10.1051/0004-6361/202243230
Datenträger:Online-Ressource
Sprache:eng
K10plus-PPN:1851263799
Verknüpfungen:→ Zeitschrift

Permanenter Link auf diesen Titel (bookmarkfähig):  https://katalog.ub.uni-heidelberg.de/titel/69091267   QR-Code
zum Seitenanfang