ExoSGAN and ExoACGAN: Exoplanet Detection using Adversarial Training
Algorithms
- URL: http://arxiv.org/abs/2207.09665v1
- Date: Wed, 20 Jul 2022 05:45:36 GMT
- Title: ExoSGAN and ExoACGAN: Exoplanet Detection using Adversarial Training
Algorithms
- Authors: Cicy K Agnes, Akthar Naveed V, Anitha Mary M O Chacko
- Abstract summary: We use two variations of generative adversarial networks to detect transiting exoplanets in K2 data.
Our techniques are able to categorize the light curves with a recall and precision of 1.00 on the test data.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Exoplanet detection opens the door to the discovery of new habitable worlds
and helps us understand how planets were formed. With the objective of finding
earth-like habitable planets, NASA launched Kepler space telescope and its
follow up mission K2. The advancement of observation capabilities has increased
the range of fresh data available for research, and manually handling them is
both time-consuming and difficult. Machine learning and deep learning
techniques can greatly assist in lowering human efforts to process the vast
array of data produced by the modern instruments of these exoplanet programs in
an economical and unbiased manner. However, care should be taken to detect all
the exoplanets precisely while simultaneously minimizing the misclassification
of non-exoplanet stars. In this paper, we utilize two variations of generative
adversarial networks, namely semi-supervised generative adversarial networks
and auxiliary classifier generative adversarial networks, to detect transiting
exoplanets in K2 data. We find that the usage of these models can be helpful
for the classification of stars with exoplanets. Both of our techniques are
able to categorize the light curves with a recall and precision of 1.00 on the
test data. Our semi-supervised technique is beneficial to solve the cumbersome
task of creating a labeled dataset.
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