Analytical Modelling of Exoplanet Transit Specroscopy with Dimensional
Analysis and Symbolic Regression
- URL: http://arxiv.org/abs/2112.11600v1
- Date: Wed, 22 Dec 2021 00:52:56 GMT
- Title: Analytical Modelling of Exoplanet Transit Specroscopy with Dimensional
Analysis and Symbolic Regression
- Authors: Konstantin T. Matchev, Katia Matcheva and Alexander Roman
- Abstract summary: The deep learning revolution has opened the door for deriving such analytical results directly with a computer algorithm fitting to the data.
We successfully demonstrate the use of symbolic regression on synthetic data for the transit radii of generic hot Jupiter exoplanets.
As a preprocessing step, we use dimensional analysis to identify the relevant dimensionless combinations of variables.
- Score: 68.8204255655161
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The physical characteristics and atmospheric chemical composition of newly
discovered exoplanets are often inferred from their transit spectra which are
obtained from complex numerical models of radiative transfer. Alternatively,
simple analytical expressions provide insightful physical intuition into the
relevant atmospheric processes. The deep learning revolution has opened the
door for deriving such analytical results directly with a computer algorithm
fitting to the data. As a proof of concept, we successfully demonstrate the use
of symbolic regression on synthetic data for the transit radii of generic hot
Jupiter exoplanets to derive a corresponding analytical formula. As a
preprocessing step, we use dimensional analysis to identify the relevant
dimensionless combinations of variables and reduce the number of independent
inputs, which improves the performance of the symbolic regression. The
dimensional analysis also allowed us to mathematically derive and properly
parametrize the most general family of degeneracies among the input atmospheric
parameters which affect the characterization of an exoplanet atmosphere through
transit spectroscopy.
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