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Global 21 cm Signal Extraction from Foreground and Instrumental Effects. I. Pattern Recognition Framework for Separation Using Training Sets

机译:从前景和器乐效果中提取21厘米的全局信号。 I.使用训练集进行分离的模式识别框架

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The sky-averaged (global) highly redshifted 21 cm spectrum from neutral hydrogen is expected to appear in the VHF range of ~20–200 MHz and its spectral shape and strength are determined by the heating properties of the first stars and black holes, by the nature and duration of reionization, and by the presence or absence of exotic physics. Measurements of the global signal would therefore provide us with a wealth of astrophysical and cosmological knowledge. However, the signal has not yet been detected because it must be seen through strong foregrounds weighted by a large beam, instrumental calibration errors, and ionospheric, ground, and radio-frequency-interference effects, which we collectively refer to as "systematics." Here, we present a signal extraction method for global signal experiments which uses Singular Value Decomposition of "training sets" to produce systematics basis functions specifically suited to each observation. Instead of requiring precise absolute knowledge of the systematics, our method effectively requires precise knowledge of how the systematics can vary. After calculating eigenmodes for the signal and systematics, we perform a weighted least square fit of the corresponding coefficients and select the number of modes to include by minimizing an information criterion. We compare the performance of the signal extraction when minimizing various information criteria and find that minimizing the Deviance Information Criterion most consistently yields unbiased fits. The methods used here are built into our widely applicable, publicly available Python package, pylinex, which analytically calculates constraints on signals and systematics from given data, errors, and training sets.
机译:来自中性氢的天空平均(全球)高度红移的21 cm光谱预计将出现在〜20–200 MHz的VHF范围内,其光谱形状和强度取决于第一颗恒星和黑洞的加热特性,电离的性质和持续时间,以及是否存在奇异物理学。因此,对全球信号的测量将为我们提供大量的天体物理学和宇宙学知识。但是,尚未检测到该信号,因为必须通过由大波束,仪器校准误差以及电离层,地面和射频干扰效应(我们统称为“系统性”)加权的强前景来观察该信号。在这里,我们提出了一种用于全局信号实验的信号提取方法,该方法使用“训练集”的奇异值分解来生成专门适合每个观察结果的系统基础函数。我们的方法并不需要精确的系统知识绝对知识,而实际上需要系统知识如何变化的精确知识。在计算信号和系统的本征模之后,我们对相应系数进行加权最小二乘拟合,并通过最小化信息标准来选择要包含的模数。我们在最小化各种信息标准时比较了信号提取的性能,发现最小化偏差信息准则最一致地产生了无偏拟合。此处使用的方法已内置到我们广泛适用的可公开获得的Python程序包pylinex中,该程序包根据给定的数据,错误和训练集来分析计算信号和系统约束。

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