A novel optimal transport-based approach for interpolating spectral time series

IF 5.4 2区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS
Mauricio Ramirez, Giuliano Pignata, Francisco Förster, Santiago González-Gaitán, Claudia P. Gutiérrez, Bastian Ayala, Guillermo Cabrera-Vives, Márcio Catelan, Alejandra M. Muñoz Arancibia, Jonathan Pineda-García
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Abstract

Context. The Vera C. Rubin Observatory is set to discover 1 million supernovae (SNe) within its first operational year. Given the impracticality of spectroscopic classification at such scales, it is mandatory to develop a reliable photometric classification framework.Aims. This paper introduces a novel method for creating spectral time series that can be used not only to generate synthetic light curves for photometric classification, but also in applications such as K-corrections and bolometric corrections. This approach is particularly valuable in the era of large astronomical surveys, where it can significantly enhance the analysis and understanding of an increasing number of SNe, even in the absence of extensive spectroscopic data.Methods. By employing interpolations based on optimal transport theory, starting from a spectroscopic sequence, we derive weighted average spectra with high cadence. The weights incorporate an uncertainty factor for penalizing interpolations between spectra that show significant epoch differences and lead to a poor match between the synthetic and observed photometry.Results. Our analysis reveals that even with a phase difference of up to 40 days between pairs of spectra, optical transport can generate interpolated spectral time series that closely resemble the original ones. Synthetic photometry extracted from these spectral time series aligns well with observed photometry. The best results are achieved in the V band, with relative residuals of less than 10% for 87% and 84% of the data for type Ia and II, respectively. For the B, g, R, and r bands, the relative residuals are between 65% and 87% within the previously mentioned 10% threshold for both classes. The worse results correspond to the i and I bands, where, in the case of SN Ia, the values drop to 53% and 42%, respectively.Conclusions. We introduce a new method for constructing spectral time series for individual SNe starting from a sparse spectroscopic sequence, and demonstrate its capability to produce reliable light curves that can be used for photometric classification.
基于最优传输的光谱时间序列插值新方法
背景维拉-鲁宾天文台(Vera C. Rubin Observatory)将在其第一个运行年发现 100 万个超新星(SNe)。鉴于在这样的规模上进行光谱分类是不切实际的,因此必须建立一个可靠的光度分类框架。本文介绍了一种创建光谱时间序列的新方法,该方法不仅可用于生成光度分类的合成光曲线,还可用于K校正和测电校正等应用。这种方法在大型天文巡天时代尤为重要,即使在缺乏大量光谱数据的情况下,它也能显著增强对越来越多的SNE的分析和理解。通过采用基于最优传输理论的插值法,从光谱序列出发,我们得出了高频率的加权平均光谱。权重中包含了一个不确定性因子,用于惩罚光谱之间的插值,这些插值显示出显著的年代差异,导致合成光度测量与观测光度测量之间的匹配度较低。我们的分析表明,即使光谱对之间存在长达 40 天的相位差,光传输也能生成与原始光谱非常相似的内插光谱时间序列。从这些光谱时间序列中提取的合成测光结果与观测到的测光结果非常吻合。V 波段的结果最好,Ia 型和 II 型分别有 87% 和 84% 的数据的相对残差小于 10%。在 B、g、R 和 r 波段,两类数据的相对残差都在 65% 到 87% 之间,不超过前面提到的 10% 的临界值。结果较差的是 i 和 I 波段,在 SN Ia 的情况下,这两个波段的数值分别下降到 53% 和 42%。我们介绍了一种从稀疏光谱序列开始为单个SNE构建光谱时间序列的新方法,并展示了其生成可靠光曲线的能力,这些光曲线可用于光度分类。
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来源期刊
Astronomy & Astrophysics
Astronomy & Astrophysics 地学天文-天文与天体物理
CiteScore
10.20
自引率
27.70%
发文量
2105
审稿时长
1-2 weeks
期刊介绍: Astronomy & Astrophysics is an international Journal that publishes papers on all aspects of astronomy and astrophysics (theoretical, observational, and instrumental) independently of the techniques used to obtain the results.
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