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Measuring the Galaxy Power Spectrum and Scale-Scale Correlations with Multiresolution-decomposed Covariance. I. Method

机译:用多分辨率分解的协方差测量银河功率谱和尺度-尺度相关性。一,方法

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We present a method for measuring the galaxy power spectrum based on multiresolution analysis of the discrete wavelet transformation (DWT). Apart from the technical advantages of the computational feasibility for data sets with a large volume and complex geometry, the DWT scale-by-scale decomposition provides a physical insight into the covariance matrix of the cosmic mass field. Since the DWT representation has a strong capability for suppressing the off-diagonal components of the covariance for self-similar clustering, the DWT covariance for all popular models of the cold dark matter cosmogony is generally diagonal, or j (scale) diagonal in the scale range in which the second or higher order scale-scale correlations are weak. In this range, the DWT covariance gives a lossless estimation of the power spectrum, which is equal to the corresponding Fourier power spectrum banded with a logarithmical scaling. This DWT estimator is optimized in the sense that the spatial resolution is automatically adaptive to the perturbation wavelength to be studied. In the scale range in which the scale-scale correlation is significant, the accuracy of a power spectrum detection depends on the scale-scale or band-band correlations. In this case, for a precision measurements of the power spectrum, or a precision comparison of the observed power spectrum with models, a measurement of the scale-scale or band-band correlations is needed. We show that the DWT covariance can be employed to measure both the band-power spectrum and second-order scale-scale correlation. We also present the DWT algorithm of the binning and Poisson sampling with real observational data. We show that the so-called alias effect appeared in usual binning schemes can exactly be eliminated by the DWT binning. Since the Poisson process possesses diagonal covariance in the DWT representation, the Poisson sampling and selection effects on the power spectrum and second order scale-scale correlation detection are suppressed into a minimum. Moreover, the effect of the non-Gaussian features of the Poisson sampling can also be calculated in this frame. The DWT method is open, i.e., one can add further DWT algorithms on the basic decomposition in order to estimate other effects on the power spectrum detection, such as non-Gaussian correlations and bias models.
机译:我们提出了一种基于离散小波变换(DWT)多分辨率分析的测量星系功率谱的方法。除了具有大体积和复杂几何形状的数据集的计算可行性的技术优势之外,DWT逐比例分解功能还提供了对宇宙质量场协方差矩阵的物理洞察力。由于DWT表示具有强大的抑制自相似聚类协方差的非对角分量的能力,因此冷暗物质宇宙的所有流行模型的DWT协方差通常是对角线,即尺度上的j(对角线)对角线二阶或更高阶比例尺度相关性较弱的范围。在此范围内,DWT协方差给出了功率谱的无损估计,该估计等于以对数比例缩放的相应傅里叶功率谱。从空间分辨率自动适应要研究的扰动波长的意义上说,优化了DWT估计器。在比例尺比例相关性显着的比例尺范围内,功率谱检测的准确度取决于比例尺比例尺或频带相关性。在这种情况下,为了进行功率谱的精确测量或将观测到的功率谱与模型进行精确比较,就需要测量比例尺或频带相关性。我们表明,DWT协方差可用于测量频带功率谱和二阶比例尺度相关性。我们还提出了具有真实观测数据的装箱和泊松采样的DWT算法。我们表明,通常的合并方案中出现的所谓别名效应可以通过DWT合并来完全消除。由于Poisson过程在DWT表示中具有对角协方差,因此将Poisson采样和选择对功率谱的影响以及二阶比例尺度相关性检测抑制到最小。此外,也可以在此帧中计算泊松采样的非高斯特征的影响。 DWT方法是开放的,即可以在基本分解上添加其他DWT算法,以便估计对功率谱检测的其他影响,例如非高斯相关性和偏差模型。

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