2022
DOI: 10.55248/gengpi.2022.3.2.12
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Detection of Exoplanets using Machine Learning

Abstract: Three methods for using machine learning to decide if a star has an exoplanet from transit survey data are discussed in this paper and are also used to determine which approach performs better on a labeled data set containing light intensity time series from extrasolar stars. Convolutional Neural Network (C.N.N.), a C.N.N. autoencoder, and Support Vector Machines ( S.V.M.) are among the three models. We trained the models using data from the Kepler Space Telescope; because there were very few confirmed exoplan… Show more

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