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Variable Star Classification with a Multiple-input Neural Network

T. Szklenár, Attila Bódi, Dóra Tarczay-Nehéz, K. Vida, György Mező, R. Szabó

2022The Astrophysical Journal17 citationsDOIOpen Access PDF

Abstract

Abstract In this experiment, we created a Multiple-Input Neural Network, consisting of convolutional and multilayer neural networks. With this setup the selected highest-performing neural network was able to distinguish variable stars based on the visual characteristics of their light curves, while taking also into account additional numerical information (e.g., period, reddening-free brightness) to differentiate visually similar light curves. The network was trained and tested on Optical Gravitational Lensing Experiment-III (OGLE-III) data using all OGLE-III observation fields, phase-folded light curves, and period data. The neural network yielded accuracies of 89%–99% for most of the main classes (Cepheids, δ Scutis, eclipsing binaries, RR Lyrae stars, Type-II Cepheids), only the first-overtone anomalous Cepheids had an accuracy of 45%. To counteract the large confusion between the first-overtone anomalous Cepheids and the RRab stars we added the reddening-free brightness as a new input and only stars from the LMC field were retained to have a fixed distance. With this change we improved the neural network’s result for the first-overtone anomalous Cepheids to almost 80%. Overall, the Multiple-input Neural Network method developed by our team is a promising alternative to existing classification methods.

Topics & Concepts

PhysicsVariable starVariable (mathematics)Artificial neural networkStar (game theory)AstrophysicsAstronomyArtificial intelligenceStarsMathematical analysisMathematicsComputer scienceStellar, planetary, and galactic studiesAstronomy and Astrophysical ResearchAstronomical Observations and Instrumentation
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