Junzhou Zhang, Shamik Ghosh, Jiazheng Dou, Yang Liu, Siyu Li, Jiming Chen, Jiaxin Wang, Zhaoxuan Zhang, Jacques Delabrouille, Mathieu Remazeilles, Chang Feng, Bin Hu, Hao Liu, Larissa Santos, Pengjie Zhang, Wen Zhao, Le Zhang, Zhi-Qi Huang, Hong Li and Xinmin Zhang
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Based on simulated data from four detector modules and a single season of observation, which we refer to as Data Challenge 1 (DC1), we employ different and independent pipelines to examine the robustness and effectiveness of estimates on foreground parameters and primordial B-mode detection. The foreground cleaning strategies used in the pipelines include the parametric method of template fitting (TF) and the nonparametric methods of constrained internal linear combination (cILC), analytical blind separation (ABS), and generalized least squares (GLS). We examine the impact of possible foreground residuals on the estimate of the CMB tensor-to-scalar ratio (r) for each pipeline by changing the contamination components in the simulated maps and varying the foreground models and sky patches for various tests. 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引用次数: 0
摘要
我们报告了在阿里 CMB 偏振望远镜实验(AliCPT-1)中使用的几种独立前景清理管道的测试结果,该实验是北半球的一个高空宇宙微波(CMB)成像仪,有数千个探测器专门用于搜索原始 CMB 偏振 B 模式特征。基于来自四个探测器模块和一个观测季(我们称之为数据挑战 1(DC1))的模拟数据,我们采用了不同的独立管道来检验前景参数和原始 B 模式探测估计值的稳健性和有效性。管道中使用的前景清理策略包括参数方法模板拟合(TF)和非参数方法约束内部线性组合(cILC)、分析盲分离(ABS)和广义最小二乘法(GLS)。我们通过改变模拟图中的污染成分,以及在各种测试中改变前景模型和天空斑块,来检验可能的前景残差对每种管道的 CMB 张量与标量比(r)估计值的影响。根据模拟输入值 rtrue = 0.023 的 DC1 数据,TF/ABS/cILC/GLS 管道中的前景残余污染水平在 2σ 级的相应统计误差范围内。此外,我们还利用张力估算器,通过量化各种 r 测量值之间的差异,帮助识别原始 B 模式信号探测中的重大前景残余污染。
Forecast of Foreground Cleaning Strategies for AliCPT-1
We report the test results of several independent foreground cleaning pipelines used in the Ali CMB Polarization Telescope experiment (AliCPT-1), a high-altitude cosmic microwave background (CMB) imager in the Northern Hemisphere with thousands of detectors dedicated to the search for a primordial CMB polarization B-mode signature. Based on simulated data from four detector modules and a single season of observation, which we refer to as Data Challenge 1 (DC1), we employ different and independent pipelines to examine the robustness and effectiveness of estimates on foreground parameters and primordial B-mode detection. The foreground cleaning strategies used in the pipelines include the parametric method of template fitting (TF) and the nonparametric methods of constrained internal linear combination (cILC), analytical blind separation (ABS), and generalized least squares (GLS). We examine the impact of possible foreground residuals on the estimate of the CMB tensor-to-scalar ratio (r) for each pipeline by changing the contamination components in the simulated maps and varying the foreground models and sky patches for various tests. According to the DC1 data with the simulation input value rtrue = 0.023, the foreground residual contamination levels in the TF/ABS/cILC/GLS pipelines are well within the corresponding statistical errors at the 2σ level. Furthermore, by utilizing the tension estimator, which helps identify significant residual foreground contamination in the detection of the primordial B-mode signal by quantifying the discrepancy between various r measurements, we conclude that the presence of small foreground residuals does not lead to any significant inconsistency in the estimation of r.