SDSS DR12 Archive中WDMS的数据挖掘

Jiang Bin, Chunyu Ma, W. Wenyu, Wang Wei, Gao Jun
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引用次数: 0

摘要

数据发布12是SDSS- iii的最终数据发布,包含所有SDSS观测数据。质量光谱不仅可以用于研究银河系的结构和演化,还可以用于多波段识别。此外,该光谱是对白矮星主序星等罕见和特殊天体进行数据挖掘的理想样本。WDMS由一颗白矮星主星和一颗低质量主序伴星组成,这对研究近距离双星的演化和参数具有积极意义。本文在进行主成分分析特征提取后,基于聚类中心比其相邻点密度大、离密度大的点距离大的思想,提出了一种聚类方法。该方法共筛选出2340个WDMS候选者,其中一些是新发现的,这证明了我们在海量光谱数据中寻找特殊天体的方法是可行的。
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Data Mining for WDMS in SDSS DR12 Archive
Data Release 12 is the final data release of the SDSS-III, containing all SDSS observations. The massive spectra can not only be used for research of the structure and evolution of the Galaxy but also for multi-waveband identification. In addition, the spectra are a ideal sample for data mining for rare and special objects like white dwarf main-sequence star. WDMS consists of a white dwarf primary and a low-mass main-sequence companion which has positive significance to the study of evolution and parameters of close binaries. In this paper, after feature extraction by PCA, an clustering approach is proposed based on the idea that cluster centers are characterized by a higher density than their neighbors and by a relatively large distance from points with higher densities. A total number of 2,340 WDMS candidates are selected by the method and some of them are new discoveries which prove that our approach of finding special celestial bodies in massive spectra data is feasible.
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