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基于影响空间和数据场的LAMOST低质量光谱分析
引用本文:杨雨晴,蔡江辉,杨海峰,赵旭俊,殷晓娜. 基于影响空间和数据场的LAMOST低质量光谱分析[J]. 光谱学与光谱分析, 2022, 42(4): 1186-1191. DOI: 10.3964/j.issn.1000-0593(2022)04-1186-06
作者姓名:杨雨晴  蔡江辉  杨海峰  赵旭俊  殷晓娜
作者单位:1. 太原科技大学计算机科学与技术学院,山西 太原 030024
2. 中北大学计算机科学与技术学院,山西 太原 030051
基金项目:国家自然科学基金项目(U1931209);;山西省重点研发项目(201903D121116);
摘    要:针对LAMOST DR5 pipeline分类为Unknown的光谱数据对其进行了特征提取和聚类分析.主要工作如下:(1)基于影响空间及数据场的特征提取.首先基于影响空间从低信噪比光谱中提取出大量小集团;然后计算各小集团内部的场并根据场对光谱排序,依次访问光谱序列及其小集团内的成员来获得特征谱;(2)对上述特征谱进行K...

关 键 词:低信噪比光谱  光谱分解  特征分析  数据场  聚类分析
收稿时间:2021-07-23

LAMOST Unknown Spectral Analysis Based on Influence Space and Data Field
YANG Yu-qing,CAI Jiang-hui,YANG Hai-feng,ZHAO Xu-jun,YIN Xiao-na. LAMOST Unknown Spectral Analysis Based on Influence Space and Data Field[J]. Spectroscopy and Spectral Analysis, 2022, 42(4): 1186-1191. DOI: 10.3964/j.issn.1000-0593(2022)04-1186-06
Authors:YANG Yu-qing  CAI Jiang-hui  YANG Hai-feng  ZHAO Xu-jun  YIN Xiao-na
Affiliation:1. School of Computer Science and Technology, Taiyuan University of Science and Technology, Taiyuan 030024, China2. School of Computer Science and Technology, North University of China, Taiyuan 030051, China
Abstract:Based on the spectral data classified as Unknown by LAMOST DR5 Pipeline, the characteristics of low-quality spectra are extracted, and clustering analysis is conducted in this paper. The main work includes: (1) Feature extraction based on influence space and the data field. Firstly, a large number of small clusters are extracted from the low SNR spectrum based on influence space; secondly, each small cluster’s data field is calculated, and the spectrum is sorted using the above field; and then, access the sorted spectrum and the members in its small cluster to obtain the characteristic spectrum. (2) Carry out K-means clustering with the above characteristic spectrum and statistics on the sky area, observed visual ninety, the signal-to-noise ratio in each band, brightness, and spectrometer/fiber distribution for each class of targets. (3) Analysis of clustering results of the low SNR spectra. All low-quality spectra are divided into five categories through cluster analysis: A. The spectral SNR is low, or the spectrum is different from the traditional classification template, but its category can be determined by feature analysis (accounting for 2.7%); B. Suspected characteristic lines or molecular bands that do not match the line table appear at the blue or red end of the spectrum (accounting for 23.6%); C. The SNR at the spectrum’s blue end is very low, and the noise value in this wavelength region is strong. While in other wavelength regions, the features of continuous spectrum and line are weak (accounting for 48%); D. Due to the splicing problem, a protrusion can be seen in the local spectrum between 5 700 and 5 900 Å, and the continuum and line characteristics are poor at other wavelengths (accounting for 24.2%); E. Many default values make it impossible to determine the category of the spectrum (accounting for 1.5%). The experimental results show that this method can not only effectively extract the characteristic spectrum of low SNR spectrum, but also effectively carry out clustering analysis on the characteristic spectrum to reveal their causes, to provide a reference for the formulation of spectrum observation plan and the analysis and processing of low SNR spectrum.
Keywords:Low-SNR spectra   Spectral decomposition   Feature analysis   Data field   Clustering analysis  
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