论文标题

高等网络:通过深度学习改善年轻恒星的派生光谱参数

APOGEE Net: Improving the derived spectral parameters for young stars through deep learning

论文作者

Olney, Richard, Kounkel, Marina, Schillinger, Chad, Scoggins, Matthew T., Yin, Yichuan, Howard, Erin, Covey, K. R., Hutchinson, Brian, Stassun, Keivan G.

论文摘要

机器学习允许从大型调查获得的恒星光谱中有效提取物理特性。对于涵盖各种波长和光谱分辨率的光谱,已证明了ML方法的生存能力,但是对于主要序列或进化的恒星,可靠的合成光谱提供了用于训练的标签和数据。年轻恒星物体(YSO)和低质量主序列(MS)恒星的光谱模型与经验对应物的匹配程度较差,但是,对以前的方法对此类恒星的光谱进行了分类的障碍。在这项工作中,我们通过其光度法生成YSO和低质量MS恒星的标签。然后,我们使用这些标签来训练深度卷积神经网络,以预测DR14数据集中具有垂直光谱的恒星的Log G,Teff和Fe/H。该“脱网net”为YSO产生了可靠的log g预测,不确定性在0.1 dex以内,并且与预总人员序列进化轨道指示的结构达成了良好的一致性,并且与独立衍生的恒星半径相关。这些值将有助于研究序列序列恒星群体以准确诊断成员资格和年龄。

Machine learning allows efficient extraction of physical properties from stellar spectra that have been obtained by large surveys. The viability of ML approaches has been demonstrated for spectra covering a variety of wavelengths and spectral resolutions, but most often for main sequence or evolved stars, where reliable synthetic spectra provide labels and data for training. Spectral models of young stellar objects (YSOs) and low mass main sequence (MS) stars are less well-matched to their empirical counterparts, however, posing barriers to previous approaches to classify spectra of such stars. In this work we generate labels for YSOs and low mass MS stars through their photometry. We then use these labels to train a deep convolutional neural network to predict log g, Teff, and Fe/H for stars with APOGEE spectra in the DR14 dataset. This "APOGEE Net" has produced reliable predictions of log g for YSOs, with uncertainties of within 0.1 dex and a good agreement with the structure indicated by pre-main sequence evolutionary tracks, and correlate well with independently derived stellar radii. These values will be useful for studying pre-main sequence stellar populations to accurately diagnose membership and ages.

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