Detection of transiting exoplanets and phase-folding their host star’s light curves from K2 data with 1D-CNN

In this research, we present two 1D Convolutional Neural Network (CNN) models that were trained, validated and tested using simulated light curves designed to mimic those expected from the Kepler Space Telescope during its extended mission (K2). We also tested them on real K2 data. Our light curve s...

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Bibliographic Details
Published in:Logic journal of the IGPL
Main Authors: Álvarez, Santiago Iglesias, Alonso, Enrique Díez, Rodríguez, Javier Rodríguez, Fernández, Saúl Pérez, Tutasig, Ronny Steveen Anangonó, Gutiérrez, Carlos González, Roca, Alejandro Buendía, Díaz, Julia María Fernández, Rodríguez, Maria Luisa Sánchez
Format: Journal Article
Language:English
Published: 09-09-2024
Online Access:Get full text
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Summary:In this research, we present two 1D Convolutional Neural Network (CNN) models that were trained, validated and tested using simulated light curves designed to mimic those expected from the Kepler Space Telescope during its extended mission (K2). We also tested them on real K2 data. Our light curve simulator considers different stellar variability phenomena, such as rotations, pulsations and flares, which along with the stellar noise expected for K2 data, hinders the transit signal detection, as in real data. The first model effectively identifies transit-like signals in light curves, classifying them based on the presence or absence of such signals. Furthermore, the second model not only phase-folds the light curves but also eliminates stellar noise, a crucial step when fitting transits to the Mandel and Agol theoretical transit shape. The obtained results include an accuracy of $\sim 99\%$ when classifying the light curves based on the presence or absence of transit-like signals, and $MAPE\sim 6\%$ regarding to the transits’ depth and duration when phase folding the light curves, showing the great capabilities of 1D-CNN for automatizing the transit search in light curves, both on simulated and real data.
ISSN:1367-0751
1368-9894
DOI:10.1093/jigpal/jzae106