论文标题
通过机器学习来搜索SED的年轻恒星对象
Searching for Young Stellar Objects through SEDs by Machine Learning
论文作者
论文摘要
在不同阶段的统计特性(例如恒星形成率和年轻恒星对象(YSO)的寿命)的准确测量对于约束恒星形成理论至关重要。但是,仅基于光谱能量分布(SED)分离星系和YSO是一项艰巨的任务,因为它们既包含来自恒星和周围尘埃的热发射,又可以应用可靠的理论来区分它们。在这里,我们比较不同的机器学习算法并开发基于完全连接的神经网络(FCN)的天文对象(SCAO)的光谱分类器,以对常规恒星,星系和YSO进行分类。 SCAO优于以前的分类器,仅由在没有先验理论知识的情况下,由分子核标记为行星形成磁盘(C2D)目录的高质量数据训练,并提供高精度(> 96%)和召回(> 98%)的优秀结果,仅包括八个乐队。我们系统地研究了观察误差和距离效应的影响,并表明即使仅使用三个频段(IRAC 3,IRAC 4和MIPS 1)的通量,在长波长状态下仍然保持了高精度性能,因为SCAO自动检测到硅酸盐吸收特征。最后,我们将SCAO应用于Spitzer增强成像产品(SEIP),这是Spitzer观察结果最完整的目录,发现了129219 YSO候选者。 SCAO网站可在http://scao.astr.nthu.edu.tw上获得。
Accurate measurements of statistical properties, such as the star formation rate and the lifetime of young stellar objects (YSOs) in different stages, is essential for constraining star formation theories. However, it is a difficult task to separate galaxies and YSOs based on spectral energy distributions (SEDs) alone, because they contain both thermal emission from stars and dust around them and no reliable theories can be applied to distinguish them. Here we compare different machine learning algorithms and develop the Spectrum Classifier of Astronomical Objects (SCAO), based on Fully Connected Neural Network (FCN), to classify regular stars, galaxies, and YSOs. Superior to previous classifiers, SCAO is solely trained by high quality data labeled in Molecular Cores to Planet-forming Disks (c2d) catalog without a priori theoretical knowledge, and provides excellent results with high precision (>96%) and recall (>98%) for YSOs when only eight bands are included. We systematically investigate the effects of observation errors and distance effects, and show that high accuracy performance is still maintained even when using fluxes of only three bands (IRAC 3, IRAC 4, and MIPS 1) in the long wavelengths regime, because the silicate absorption feature is automatically detected by SCAO. Finally, we apply SCAO to Spitzer Enhanced Imaging Products (SEIP), the most complete catalog of Spitzer observations, and found 129219 YSO candidates. The website from SCAO is available at http://scao.astr.nthu.edu.tw.