部分约束内线性组合:一种低噪声微波背景前景抑制方法

Y. S. Abylkairov, O. Darwish, J. Hill, B. Sherwin
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引用次数: 5

摘要

内线性组合(ILC)方法是微波背景数据分析中应用最广泛的一种多频清洗方法。这些方法通过最小化共加图中的总方差(受制于信号保留约束)来减少前景,尽管通常仍然存在显著的前景残差或偏差。对ILC方法的改进是约束ILC (cILC),它显式地取消某些前景组件;然而,这种前景零化对地面CMB数据集来说往往代价高昂,在小尺度上地图噪声显著增加。在本文中,我们探索了一种新的方法,部分约束ILC (pcILC),它允许我们优化ILC方法中前景偏差和方差之间的权衡。特别是,该方法允许我们最小化受不等式约束的方差,该约束要求约束前景至少减少一个固定因子,该因子可以根据预期应用程序的前景敏感性进行选择。我们在模拟的天空地图上测试了我们的方法,这是一个类似西蒙斯天文台的实验;我们发现,对于清洗热Sunyaev-Zel'dovich (tSZ)污染,如果tSZ残留量为标准ILC残留量的20%,则CMB温度图的方差比cILC值至少减少50%。我们还演示了该方法在CMB透镜重建中降低噪声的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Partially constrained internal linear combination: A method for low-noise CMB foreground mitigation
Internal Linear Combination (ILC) methods are some of the most widely used multi-frequency cleaning techniques employed in CMB data analysis. These methods reduce foregrounds by minimizing the total variance in the coadded map (subject to a signal-preservation constraint), although often significant foreground residuals or biases remain. A modification to the ILC method is the constrained ILC (cILC), which explicitly nulls certain foreground components; however, this foreground nulling often comes at a high price for ground-based CMB datasets, with the map noise increasing significantly on small scales. In this paper we explore a new method, the partially constrained ILC (pcILC), which allows us to optimize the tradeoff between foreground bias and variance in ILC methods. In particular, this method allows us to minimize the variance subject to an inequality constraint requiring that the constrained foregrounds are reduced by at least a fixed factor, which can be chosen based on the foreground sensitivity of the intended application. We test our method on simulated sky maps for a Simons Observatory-like experiment; we find that for cleaning thermal Sunyaev-Zel'dovich (tSZ) contamination at $\ell \in [3000,4800]$, if a small tSZ residual of 20% of the standard ILC residual can be tolerated, the variance of the CMB temperature map is reduced by at least 50% over the cILC value. We also demonstrate an application of this method to reduce noise in CMB lensing reconstruction.
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