论文标题

使用机器学习方法从Lamost光谱中搜索钡星:i

Searching for Barium Stars from the LAMOST Spectra Using the Machine Learning Method: I

论文作者

Guo, Fengyue, Cheng, Zhongding, Kong, Xiaoming, Zhang, Yatao, Bu, Yude, Yi, Zhenping, Du, Bing, Pan, Jingchang

论文摘要

钡星是化学特殊的恒星,表现出S过程元素的增强。钡星的化学丰度分析可以为研究星系化学演化提供重要的线索。通过数据发行9(DR9),大型天空区域多对象光纤光谱望远镜(Lamost)释放了超过600万个FGK型恒星的低分辨率光谱,这可以显着增加钡恒星的样本量。在本文中,我们使用机器学习算法来搜索Lamost低分辨率光谱的钡星。我们已经应用了光梯度提升机(LGBM)算法来建立基于不同特征的钡恒星分类器,并为确定钡候选物的[BA/FE]和[SR/FE]构建预测指标。与整个频谱中特征的分类表现最佳:对于具有增强标的样品,精度= 97.81%,召回= 96.05%;对于具有钡增强的样品,精度= 96.03%,召回= 97.70%。在预测中,[ba/fe]在4554Å处估计的[BA/Fe]的分散率要小于Baii Line的4934Å:MAE $ _ {4554Å} $ = 0.07,$σ__{4554Å} $ = 0.12 $ = 0.12。 [SR/FE]从SRII系列的4077Å估计的性能优于4215Å:MAE $ _ {4077Å} $ = 0.09,$σ_{4077Å} $ = 0.16的SRII线的表现要好。 LGBM和其他流行算法的比较表明,LGBM在分类钡恒星中是准确有效的。这项工作表明,机器学习可以用作识别化学奇特的恒星并确定其元素丰度的有效手段。

Barium stars are chemically peculiar stars that exhibit enhancement of s-process elements. Chemical abundance analysis of barium stars can provide crucial clues for the study of the chemical evolution of the Galaxy. The Large Sky Area Multi-Object Fiber Spectroscopic Telescope (LAMOST) has released more than 6 million low-resolution spectra of FGK-type stars by Data Release 9 (DR9), which can significantly increase the sample size of barium stars. In this paper, we used machine learning algorithms to search for barium stars from low-resolution spectra of LAMOST. We have applied the Light Gradient Boosting Machine (LGBM) algorithm to build classifiers of barium stars based on different features, and build predictors for determining [Ba/Fe] and [Sr/Fe] of barium candidates. The classification with features in the whole spectrum performs best: for the sample with strontium enhancement, Precision = 97.81%, and Recall = 96.05%; for the sample with barium enhancement, Precision = 96.03% and Recall = 97.70%. In prediction, [Ba/Fe] estimated from BaII line at 4554 Å has smaller dispersion than that from BaII line at 4934 Å: MAE$_{4554 Å}$ = 0.07, $σ_{4554 Å}$ = 0.12. [Sr/Fe] estimated from SrII line at 4077 Å performs better than that from SrII line at 4215 Å: MAE$_{4077 Å}$ = 0.09, $σ_{4077 Å}$ = 0.16. A comparison of the LGBM and other popular algorithms shows that LGBM is accurate and efficient in classifying barium stars. This work demonstrated that machine learning can be used as an effective means to identify chemically peculiar stars and determine their elemental abundance.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源