Mode Angular Degree Identification in Subgiant Stars with Convolutional Neural Networks based on Power Spectrum [SSA]

http://arxiv.org/abs/2012.13120


Identifying the angular degrees $l$ of oscillation modes is essential for asteroseismology and depends on visual tagging before fitting power spectra in a so-called peakbagging analysis. In oscillating subgiants, radial ($l$= 0) mode frequencies distributed linearly in frequency, while non-radial ($l$ >= 1) modes are p-g mixed modes that having a complex distribution in frequency, which increased the difficulty of identifying $l$. In this study, we trained a 1D convolutional neural network to perform this task using smoothed oscillation spectra. By training simulation data and fine-tuning the pre-trained network, we achieved a 95 per cent accuracy on Kepler data.

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M. Du, S. Bi, X. Zhang, et. al.
Fri, 25 Dec 20
44/51

Comments: 9 pages, 10 figures, accepted by MNRAS