论文标题
在红外光学北部调查(工会)附近的紫外线中,CNN识别后的固定后培养官的星形形成特征
Star formation characteristics of CNN-identified post-mergers in the Ultraviolet Near Infrared Optical Northern Survey (UNIONS)
论文作者
论文摘要
合并后时期在星系进化中的重要性已得到充分记录,但众所周知,后炉子很难识别。虽然合并引起的功能有时可能是独特的,但经常通过视觉检查错过它们。此外,由于后自发器的固有性(在低红移宇宙中〜1%),视觉分类工作效率很低,而非参数统计合并选择方法并不能说明后火星后的多样性或出现的环境的多样性。为了解决这些问题,我们部署了一个卷积神经网络(CNN),该网络已接受了对插图式模拟的模拟星系的现实模拟观察的培训和评估,并从加拿大法国成像调查(CFIS)的星系图像(CFIS)进行了培训,这是近乎北方北部的紫外线北部调查的一部分(CFIS)。我们介绍了CNN预测的合并后确定性最高的星系的特征,以及699个现场后的视觉确认子集。我们发现,具有高CNN合并概率的后炉子(P(x)> 0.8)的平均星形形成率比质量和红移匹配的对照样品高0.1个DEX。在视觉确认的合并后样品中,SFR增强更大,比对照样品高两个。
The importance of the post-merger epoch in galaxy evolution has been well-documented, but post-mergers are notoriously difficult to identify. While the features induced by mergers can sometimes be distinctive, they are frequently missed by visual inspection. In addition, visual classification efforts are highly inefficient because of the inherent rarity of post-mergers (~1% in the low-redshift Universe), and non-parametric statistical merger selection methods do not account for the diversity of post-mergers or the environments in which they appear. To address these issues, we deploy a convolutional neural network (CNN) which has been trained and evaluated on realistic mock observations of simulated galaxies from the IllustrisTNG simulations, to galaxy images from the Canada France Imaging Survey (CFIS), which is part of the Ultraviolet Near Infrared Optical Northern Survey (UNIONS). We present the characteristics of the galaxies with the highest CNN-predicted post-merger certainties, as well as a visually confirmed subset of 699 post-mergers. We find that post-mergers with high CNN merger probabilities (p(x)>0.8) have an average star formation rate that is 0.1 dex higher than a mass- and redshift-matched control sample. The SFR enhancement is even greater in the visually confirmed post-merger sample, a factor of two higher than the control sample.