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Efficient Search for Extremely Metal Poor Galaxies in the Local Universe Using Convolutional Neural Networks

arXiv · Astrophysics of Galaxies(2025)

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Abstract
Nearby extremely metal-poor galaxies (XMPs) allow us to study primitive galaxy formation and evolution in greater detail than is possible at high redshift. This work, for the first time, promotes the use of convolutional neural networks (CNNs) to efficiently search for XMPs in multi-band imaging data based on their predicted N2 index (N2 ≡log{/}). We developed a sequential characterisation pipeline, composed of three CNN procedures: (i) a classifier for metal-poor galaxies, (ii) a classifier for XMPs, and (iii) an N2 predictor. The pipeline is applied to over 7.7 million SDSS DR17 imaging data without SDSS spectroscopy. The predicted N2 values are used to select promising candidates for observations. This approach was validated by new observations of 45 candidates with redshifts less than 0.065 using the 2.54 m Isaac Newton Telescope (INT) and the 4.1 m Southern Astrophysical Research (SOAR) Telescope between 2023 and 2024. All 45 candidates are confirmed to be metal-poor, including 28 new discoveries. There are 18/45 galaxies lacking detectable lines (S/N<2); for these, we report 2σ upper limits on their oxygen abundance. Our XMPs have estimated oxygen abundances of 7.1≤≤8.7 (2σ upper limit), based on the N2 index, and 21 of them with estimated metallicity <0.1 Z_⊙. Additionally, we identified 4 potential candidates of low-metallicity AGNs at ≲0.1Z_⊙. Finally, we found that our observed samples are mostly brighter in the g-band compared to other filters, similar to blueberry (BB) galaxies, resembling green pea galaxies and high-redshift Lyα emitters.
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要点】:本研究首次使用卷积神经网络(CNN)在多波段成像数据中高效搜索附近极端金属贫乏星系(XMPs),提出了一种基于N2指数预测的搜索方法,并成功发现了新的XMPs候选星系。

方法】:通过开发包含三个步骤的顺序特征化管道,即金属贫乏星系分类器、XMPs分类器以及N2指数预测器,使用CNN对超过770万SDSS DR17成像数据进行分析。

实验】:利用2.54米Isaac Newton望远镜(INT)和4.1米Southern Astrophysical Research望远镜(SOAR)对45个红移小于0.065的候选星系进行观测验证,确认所有候选星系均为金属贫乏星系,其中包括28个新发现,并报告了18个缺乏可探测谱线(信噪比<2)的星系的氧丰度上限。实验使用的数据集为SDSS DR17。