典型文献
Galaxy Spectra Neural Networks (GaSNets). I. Searching for Strong Lens Candidates in eBOSS Spectra Using Deep Learning
文献摘要:
With the advent of new spectroscopic surveys from ground and space, observing up to hundreds of millions of galaxies, spectra classification will become overwhelming for standard analysis techniques. To prepare for this challenge, we introduce a family of deep learning tools to classify features in one-dimensional spectra. As the first application of these Galaxy Spectra neural Networks (GaSNets), we focus on tools specialized in identifying emission lines from strongly lensed star-forming galaxies in the eBOSS spectra. We first discuss the training and testing of these networks and define a threshold probability, PL, of 95%for the high-quality event detection. Then, using a previous set of spectroscopically selected strong lenses from eBOSS, confirmed with the Hubble Space Telescope (HST), we estimate a completeness of~80%as the fraction of lenses recovered above the adopted PL. We finally apply the GaSNets to~1.3M eBOSS spectra to collect the first list of~430 new high-quality candidates identified with deep learning from spectroscopy and visually graded as highly probable real events. A preliminary check against ground-based observations tentatively shows that this sample has a confirmation rate of 38%, in line with previous samples selected with standard (no deep learning) classification tools and confirmed by the HST. This first test shows that machine learning can be efficiently extended to feature recognition in the wavelength space, which will be crucial for future surveys like 4MOST, DESI, Euclid, and the China Space Station Telescope.
文献关键词:
中图分类号:
作者姓名:
Fucheng Zhong;Rui Li;Nicola R.Napolitano
作者机构:
School of Physics and Astronomy,Sun Yat-sen University,Zhuhai Campus,Zhuhai 519082,China;CSST Science Center for Guangdong-Hong Kong-Macau Great Bay Area,Zhuhai 519082,China;School of Astronomy and Space Science,University of Chinese Academy of Sciences,Beijing 100049,China;National Astronomical Observatories,Chinese Academy of Sciences,Beijing 100101,China
文献出处:
引用格式:
[1]Fucheng Zhong;Rui Li;Nicola R.Napolitano-.Galaxy Spectra Neural Networks (GaSNets). I. Searching for Strong Lens Candidates in eBOSS Spectra Using Deep Learning)[J].天文和天体物理学研究,2022(06):142-169
A类:
GaSNets,Candidates,eBOSS,lensed,4MOST
B类:
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AB值:
0.566667
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