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首页> 外文期刊>The Astrophysical journal >Bayesian Single-Epoch Photometric Classification of Supernovae
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Bayesian Single-Epoch Photometric Classification of Supernovae

机译:贝叶斯单星光度学分类的超新星

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Ongoing supernova (SN) surveys find hundreds of candidates that require confirmation for their various uses. Traditional classification based on follow-up spectroscopy of all candidates is virtually impossible for these large samples. The use of Type Ia SNe as standard candles is at an evolved stage that requires pure, uncontaminated samples. However, other SN survey applications, such as measuring cosmic SN rates, could benefit from a classification of SNe on a statistical basis, rather than case by case. With this objective in mind, we have developed the SN-ABC, an automatic Bayesian classifying algorithm for supernovae. We rely solely on single-epoch multiband photometry and host-galaxy (photometric) redshift information to sort SN candidates into the two major types, Ia and core-collapse supernovae. We test the SN-ABC performance on published samples of SNe from the Supernova Legacy Survey (SNLS) and GOODS projects that have both broadband photometry and spectroscopic classification (so the true type is known). The SN-ABC correctly classifies up to 97% (85%) of the Type Ia (II-P) SNe in SNLS, and similar fractions of the GOODS SNe, depending on photometric redshift quality. Using simulations with large artificial samples, we find similarly high success fractions for Types Ia and II-P, and reasonable (~75%) success rates in classifying Type Ibc SNe as core-collapse. Type IIn SNe, however, are often misclassified as Type Ia. In deep surveys, SNe Ia are best classified at redshifts z 0.6 or when near maximum. Core-collapse SNe (other than Type IIn) are best recognized several weeks after maximum, or at z 0.6. Assuming the SNe are young, as would be the case for rolling surveys, the success fractions improve by a degree dependent on the type and redshift. The fractional contamination of a single-epoch photometrically selected sample of SNe Ia by core-collapse SNe varies between less than 10% and as much as 30%, depending on the intrinsic fraction and redshift distribution of the core-collapse SNe in a given survey. The SN-ABC also allows the rejection of SN "impostors" such as active galactic nuclei (AGNs), with half of the AGNs we simulate rejected by the algorithm. Our algorithm also supplies a good measure of the quality of the classification, which is valuable for error estimation.
机译:正在进行的超新星(SN)调查发现数百名候选人需要对其各种用途进行确认。对于这些大样本,基于所有候选物的后续光谱学的传统分类实际上是不可能的。将Ia型SNe用作标准蜡烛尚处于发展阶段,需要纯净,无污染的样品。但是,其他SN调查应用程序(例如测量宇宙SN率)可以从统计基础上而不是个案的情况下受益于SNe的分类。考虑到这一目标,我们开发了SN-ABC,这是一种用于超新星的自动贝叶斯分类算法。我们仅依靠单历时多波段测光和主机星系(测光)红移信息将SN候选者分为Ia和核塌陷超新星这两种主要类型。我们在超新星遗留物调查(SNLS)和GOODS项目的SNe的已发布样本中测试了SN-ABC性能,这些样本具有宽带光度法和光谱分类法(因此知道真实的类型)。 SN-ABC可以根据光度红移质量正确分类SNLS中高达97%(85%)的Ia(II-P)SNe类型,以及GOODS SNe的类似部分。通过使用大型人工样本进行的模拟,我们发现Ia和II-P型成功率相似,并且将Ibc SNe型归类为核心塌陷的成功率约为(75%)。但是,类型IIn SNe通常被误分类为类型Ia。在深入调查中,最好将SNe Ia分类为红移z 0.6或接近最大值时。最好在最大值几周后或在z 0.6时识别出核心塌陷SNe(类型IIn除外)。假设SNe很年轻(就像滚动调查一样),则成功分数的提高取决于类型和红移。单周期光度选择的SNe Ia样品被核心塌陷SNe污染的分数变化范围小于10%至高达30%,具体取决于给定调查中核心塌陷SNe的固有分数和红移分布。 SN-ABC还允许拒绝诸如活动银河核(AGN)之类的SN“冒充者”,而我们模拟的一半AGN被算法拒绝了。我们的算法还提供了很好的分类质量度量,这对于错误估计非常有价值。

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