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Deep Learning Classification in Asteroseismology

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arxiv 1705.06405 v3 pith:F475QNGH submitted 2017-05-18 astro-ph.SR astro-ph.IM

Deep Learning Classification in Asteroseismology

classification astro-ph.SR astro-ph.IM
keywords giantsascendingbranchconvolutionalfeaturesgiantkeplerlearning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In the power spectra of oscillating red giants, there are visually distinct features defining stars ascending the red giant branch from those that have commenced helium core burning. We train a one-dimensional convolutional neural network by supervised learning to automatically learn these visual features from images of folded oscillation spectra. By training and testing on \textit{Kepler} red giants, we achieve an accuracy of up to 99\% in separating helium-burning red giants from those ascending the red giant branch. The convolutional neural network additionally shows capability in accurately predicting the evolutionary states of 5379 previously unclassified \textit{Kepler} red giants, by which we now have greatly increased the number of classified stars.

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