0000000000190386

AUTHOR

Lisseth Gavilan

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RotNet: Fast and Scalable Estimation of Stellar Rotation Periods Using Convolutional Neural Networks

2020

Magnetic activity in stars manifests as dark spots on their surfaces that modulate the brightness observed by telescopes. These light curves contain important information on stellar rotation. However, the accurate estimation of rotation periods is computationally expensive due to scarce ground truth information, noisy data, and large parameter spaces that lead to degenerate solutions. We harness the power of deep learning and successfully apply Convolutional Neural Networks to regress stellar rotation periods from Kepler light curves. Geometry-preserving time-series to image transformations of the light curves serve as inputs to a ResNet-18 based architecture which is trained through transf…

FOS: Computer and information sciencesComputer Science - Machine LearningAstrophysics - Solar and Stellar AstrophysicsFOS: Physical sciencesSolar and Stellar Astrophysics (astro-ph.SR)Machine Learning (cs.LG)
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