Data mining of stellar spectra with emission lines based on Hadoop

Guozhou Ge, Jingchang Pan
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引用次数: 1

Abstract

Large Sky Area Multi-Object Fiber Spectroscopy Telescope (LAMOST) is a meridian reflecting Schmidt telescope. For each observation, it will produce tens of thousands of spectra. The spectra obtained from LAMOST pilot survey and the first two years of its regular survey, LMOST data release 2 (DR2) was released online in December 2014. This data set contains about more than four million spectra, which include stars, galaxies, quasars and other unknown stars. LAMOST large scientific survey project has provide massive spectra for the astronomers to search some rare special stars such as Cataclysmic Variable stars (CVs), Herbig Ae/Be etc. These special stars always contain emission lines. The existing of emission lines indicate that the stars have experienced or are not stable ejection process. The search for these objects is helpful in astronomy for scholars to study the stellar evolution. In this paper, we study the identification method of emission line stars, using the distributed, parallel computing large data processing technology, Hadoop, the emission line stars (ELS) spectra were screened from the DR2 spectra data set. Through by a multi node cluster parallel data mining experiment, we got 51092 spectra with emission lines from these spectra. Hadoop cluster has greatly improved the identification transmission line of the stellar spectrum efficiency, and this paper provides important reference value for the future to resolve similar massive spectra data processing problems.
基于Hadoop的恒星发射谱线数据挖掘
大空域多目标光纤光谱望远镜(LAMOST)是一种子午反射式施密特望远镜。对于每次观测,它将产生数以万计的光谱。LAMOST试点调查和前两年常规调查获得的光谱,LMOST数据发布2 (DR2)于2014年12月在线发布。这个数据集包含了大约400多万个光谱,其中包括恒星、星系、类星体和其他未知恒星。LAMOST大型科学巡天项目为天文学家寻找一些罕见的特殊恒星,如巨变星(cv)、赫比格Ae/Be等提供了大量的光谱。这些特殊的恒星总是包含发射线。发射谱线的存在表明恒星经历了或不稳定的抛射过程。寻找这些天体有助于天文学学者研究恒星演化。本文研究了发射线星的识别方法,利用分布式、并行计算大数据处理技术Hadoop,从DR2光谱数据集中筛选发射线星(ELS)光谱。通过多节点聚类并行数据挖掘实验,得到了51092个具有发射谱线的光谱。Hadoop集群极大地提高了恒星光谱识别传输线的效率,为今后解决类似的海量光谱数据处理问题提供了重要的参考价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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