论文标题
使用机器学习来调查各种金属性的尘土飞扬的恒星的种群
Using machine learning to investigate the populations of dusty evolved stars in various metallicities
论文作者
论文摘要
群众损失是了解恒星演变的关键特性,尤其是对于低金属性环境。在过去的几十年中,对于单个进化模型,我们的知识在过去几十年中都得到了巨大改善。但是,尽管在观察上肯定存在,但在模型中不包括情节质量损失,而目前尚不确定其作用。一个主要的障碍是缺乏足够大的机密恒星样品。我们试图通过使用颜色指数(来自IR/Spitzer和光学/Pan-Stars光度法)应用集合机器学习方法来解决此问题,并将来自三种不同算法的概率组合在一起。我们对M31和M33源进行了培训,并具有已知的光谱分类,并将其分为蓝色/黄色/红色/B [E]超级巨人,发光蓝色变量,经典的狼射线和背景星系/AGNS。然后,我们将分类器应用于附近25个星系中的大约100万个Spitzer点源,涵盖了一系列金属($ 1/15 $至$ \ sim3〜Z _ {\ odot} $)。配备光谱分类,我们研究了这些种群的金属性。
Mass loss is a key property to understand stellar evolution and in particular for low-metallicity environments. Our knowledge has improved dramatically over the last decades both for single and binary evolutionary models. However, episodic mass loss although definitely present observationally, is not included in the models, while its role is currently undetermined. A major hindrance is the lack of large enough samples of classified stars. We attempted to address this by applying an ensemble machine-learning approach using color indices (from IR/Spitzer and optical/Pan-STARRS photometry) as features and combining the probabilities from three different algorithms. We trained on M31 and M33 sources with known spectral classification, which we grouped into Blue/Yellow/Red/B[e] Supergiants, Luminous Blue Variables, classical Wolf-Rayet and background galaxies/AGNs. We then applied the classifier to about one million Spitzer point sources from 25 nearby galaxies, spanning a range of metallicites ($1/15$ to $\sim3~Z_{\odot}$). Equipped with spectral classifications we investigated the occurrence of these populations with metallicity.