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Automated Classification of Eclipsing Binary Systems in the VVV Survey

Monthly Notices of the Royal Astronomical Society(2023)

Consejo Nacl Invest Cient & Tecn CONICET | Univ Atacama | Univ Andres Bello

Cited 3|Views33
Abstract
With the advent of large-scale photometric surveys of the sky, modern science witnesses the dawn of big data astronomy, where automatic handling and discovery are paramount. In this context, classification tasks are among the key capabilities a data reduction pipeline must possess in order to compile reliable data sets, to accomplish data processing with an efficiency level impossible to achieve by means of detailed processing and human intervention. The VISTA Variables of the Via Lactea Survey, in the southern part of the Galactic disc, comprises multiepoch photometric data necessary for the potential discovery of variable objects, including eclipsing binary systems (EBs). In this study, we use a recently published catalogue of one hundred EBs, classified by fine-tuning theoretical models according to contact, detached, or semidetached classes belonging to the tile d040 of the VVV. We describe the method implemented to obtain a supervised machine-learning model, capable of classifying EBs using information extracted from the light curves of variable object candidates in the phase space from tile d078. We also discuss the efficiency of the models, the relative importance of the features and the future prospects to construct an extensive data base of EBs in the VVV survey.
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methods: data analysis,methods: statistical,binaries: eclipsing,infrared: stars
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要点】:该论文通过优化理论模型,开发了一种能够自动分类VVV调查中的食双星系统的机器学习方法,并强调了这种方法在处理大数据天文学中的重要性。

方法】:研究者采用监督机器学习方法,通过优化理论模型对VVV调查中的食双星进行分类。

实验】:研究使用了VVV调查中d040区域的食双星目录,并通过d078区域的变星候选者在相空间的信息来训练模型,提高了分类的准确性,并讨论了模型的效率和特征的重要性。