论文标题

SDSS-IV漫画:通过与机器学习合并阶段揭示星系互动

SDSS-IV MaNGA: Unveiling Galaxy Interaction by Merger Stages with Machine Learning

论文作者

Chang, Yu-Yen, Lin, Lihwai, Pan, Hsi-An, Lin, Chieh-An, Hsieh, Bau-Ching, Bottrell, Connor, Wang, Pin-Wei

论文摘要

我们使用机器学习技术来对星系合并阶段进行分类,该阶段可以揭示出驱动星系相互作用期间驱动恒星形成和主动银河核(AGN)活动的物理过程。该样品包含来自积分场光谱调查SDSS-IV漫画中的4,690个星系,可以分离为1,060个合并星系和3630个非合并或未分类的星系。对于合并样品,(1)传入对相,(2)首次上级通道阶段,(3)侵蚀或仅通过启示剂,以及(4)最终结合阶段或后旋转器。借助投影分离,视线速度差,SDSS GRI图像和漫画速度图的信息,我们能够以良好的精度对合并及其阶段进行分类,这是识别相互作用星系的最重要分数。对于2相分类(二进制;非合并和合并),性能可以与LGBMClassifier相当高(精度> 0.90)。我们发现可以通过旋转来增加样本量,因此5期分类(非合并,1、2、3和4合并阶段)也可以很好(精度> 0.85)。最重要的功能来自SDSS GRI图像。漫画HA速度图,预计分离和视线速度差的贡献可以进一步提高性能0-20%。换句话说,图像和速度信息足以捕获银河相互作用的重要特征,我们的结果可以适用于整个漫画数据以及未来的全套调查。

We use machine learning techniques to classify galaxy merger stages, which can unveil physical processes that drive the star formation and active galactic nucleus (AGN) activities during galaxy interaction. The sample contains 4,690 galaxies from the integral field spectroscopy survey SDSS-IV MaNGA, and can be separated to 1,060 merging galaxies and 3630 non-merging or unclassified galaxies. For the merger sample, there are 468, 125, 293, and 174 galaxies in (1) incoming pair phase, (2) first pericentric passage phase, (3) aproaching or just passing the apocenter, and (4) final coalescence phase or post-mergers. With the information of projected separation, line-of-sight velocity difference, SDSS gri images, and MaNGA Ha velocity map, we are able to classify the mergers and their stages with good precision, which is the most important score to identify interacting galaxies. For the 2-phase classification (binary; non-merger and merger), the performance can be high (precision>0.90) with LGBMClassifier. We find that sample size can be increased by rotation, so the 5-phase classification (non-merger, 1, 2, 3, and 4 merger stages) can be also good (precision>0.85). The most important features come from SDSS gri images. The contribution from MaNGA Ha velocity map, projected separation, and line-of-sight velocity difference can further improve the performance by 0-20%. In other words, the image and the velocity information are sufficient to capture important features of galaxy interactions, and our results can apply to the entire MaNGA data as well as future all-sky surveys.

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