在现代巡天数据中寻找L&T褐矮星的机器学习方法

IF 1.9 4区 物理与天体物理 Q2 ASTRONOMY & ASTROPHYSICS Astronomy and Computing Pub Date : 2023-10-01 DOI:10.1016/j.ascom.2023.100744
A. Avdeeva
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引用次数: 0

摘要

根据各种估计,棕矮星(BD)应该占银河系所有天体的25%。然而,无论是单独还是作为一个群体,它们都很少被发现并得到很好的研究。这类研究需要均匀完整的棕矮星样本。由于它们的弱点,对棕矮星的光谱研究相当费力。因此,通过光谱观测证实,目前似乎无法创建一个重要的、可靠的棕矮星样本。已经进行了多次尝试,以搜索和创建一组棕矮星,将它们的颜色作为应用于大量调查数据的决策规则。在这项工作中,我们在PanStarrs DR1、2MASS和WISE数据上使用随机森林分类器、XGBoost、SVM分类器和TabNet等机器学习方法来区分L和T棕矮星与其他光谱和光度类别的物体。讨论了模型的解释。我们还将我们的模型与经典决策规则进行了比较,证明了它们的有效性和相关性。
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Machine learning methods for the search for L&T brown dwarfs in the data of modern sky surveys

According to various estimates, brown dwarfs (BD) should account for up to 25 percent of all objects in the Galaxy. However, few of them are discovered and well-studied, both individually and as a population. Homogeneous and complete samples of brown dwarfs are needed for these kinds of studies. Due to their weakness, spectral studies of brown dwarfs are rather laborious. For this reason, creating a significant reliable sample of brown dwarfs, confirmed by spectroscopic observations, seems unattainable at the moment. Numerous attempts have been made to search for and create a set of brown dwarfs using their colours as a decision rule applied to a vast amount of survey data. In this work, we use machine learning methods such as Random Forest Classifier, XGBoost, SVM Classifier and TabNet on PanStarrs DR1, 2MASS and WISE data to distinguish L and T brown dwarfs from objects of other spectral and luminosity classes. The explanation of the models is discussed. We also compare our models with classical decision rules, proving their efficiency and relevance.

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来源期刊
Astronomy and Computing
Astronomy and Computing ASTRONOMY & ASTROPHYSICSCOMPUTER SCIENCE,-COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
CiteScore
4.10
自引率
8.00%
发文量
67
期刊介绍: Astronomy and Computing is a peer-reviewed journal that focuses on the broad area between astronomy, computer science and information technology. The journal aims to publish the work of scientists and (software) engineers in all aspects of astronomical computing, including the collection, analysis, reduction, visualisation, preservation and dissemination of data, and the development of astronomical software and simulations. The journal covers applications for academic computer science techniques to astronomy, as well as novel applications of information technologies within astronomy.
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