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The Spectroscopic Binaries from the LAMOST Medium-resolution Survey. I. Searching for Double-lined Spectroscopic Binaries with a Convolutional Neural Network

Bo Zhang, Yingjie Jing, Fan Yang, Junchen Wan, Xin Ji, Jian-Ning Fu, Chao Liu, Xiaobin Zhang, Feng Luo, Hao Tian, Yutao Zhou, Jiaxin Wang, Yanjun Guo, Weikai Zong, Jian-Ping Xiong, Jiao Li

2022The Astrophysical Journal Supplement Series42 citationsDOIOpen Access PDF

Abstract

Abstract We developed a convolutional neural network model to distinguish the double-lined spectroscopic binaries (SB2s) from others based on single-exposure medium-resolution spectra ( R ∼ 7500). The training set consists of a large set of mock spectra of single stars and binaries synthesized based on the MIST stellar evolutionary model and ATLAS9 atmospheric model. Our model reaches a novel theoretic false-positive rate by adding a proper penalty on the negative sample (e.g., 0.12% and 0.16% for the blue/red arm when the penalty parameter Λ = 16). Tests show that the performance is as expected and favors FGK-type main-sequence (MS) binaries with high mass ratio ( q ≥ 0.7) and large radial velocity separation (Δ v ≥ 50 km s −1 ). Although the real false-positive rate cannot be estimated reliably, validating on eclipsing binaries identified from Kepler light curves indicates that our model predicts low binary probabilities at eclipsing phases (0, 0.5, and 1.0) as expected. The color–magnitude diagram also helps illustrate its feasibility and capability of identifying FGK MS binaries from spectra. We conclude that this model is reasonably reliable and can provide an automatic approach to identify SB2s with period ≲10 days. This work yields a catalog of binary probabilities for over 5 million spectra of 1 million sources from the LAMOST medium-resolution survey (MRS) and a catalog of 2198 SB2 candidates whose physical properties will be analyzed in a follow-up paper. Data products are made publicly available online, as well as our Github website.

Topics & Concepts

PhysicsLAMOSTAstrophysicsBinary numberSpectral lineStarsRadial velocitySet (abstract data type)Convolutional neural networkDiagramResolution (logic)AlgorithmComputer scienceArtificial intelligenceAstronomyMathematicsDatabaseArithmeticProgramming languageStellar, planetary, and galactic studiesAstronomy and Astrophysical ResearchGamma-ray bursts and supernovae
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