Computing Transiting Exoplanet Parameters with 1D Convolutional Neural
Networks
- URL: http://arxiv.org/abs/2402.13673v1
- Date: Wed, 21 Feb 2024 10:17:23 GMT
- Title: Computing Transiting Exoplanet Parameters with 1D Convolutional Neural
Networks
- Authors: Santiago Iglesias \'Alvarez, Enrique D\'iez Alonso, Mar\'ia Luisa
S\'anchez Rodr\'iguez, Javier Rodr\'iguez Rodr\'iguez, Sa\'ul P\'erez
Fern\'andez and Francisco Javier de Cos Juez
- Abstract summary: Two 1D convolutional neural network models are presented.
One model operates on complete light curves and estimates the orbital period.
The other one operates on phase-folded light curves and estimates the semimajor axis of the orbit and the square of the planet-to-star radius ratio.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The transit method allows the detection and characterization of planetary
systems by analyzing stellar light curves. Convolutional neural networks appear
to offer a viable solution for automating these analyses. In this research, two
1D convolutional neural network models, which work with simulated light curves
in which transit-like signals were injected, are presented. One model operates
on complete light curves and estimates the orbital period, and the other one
operates on phase-folded light curves and estimates the semimajor axis of the
orbit and the square of the planet-to-star radius ratio. Both models were
tested on real data from TESS light curves with confirmed planets to ensure
that they are able to work with real data. The results obtained show that 1D
CNNs are able to characterize transiting exoplanets from their host star's
detrended light curve and, furthermore, reducing both the required time and
computational costs compared with the current detection and characterization
algorithms.
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