首页> 外文期刊>The Astrophysical journal >ON SIGNALS FAINT AND SPARSE: THE ACICA ALGORITHM FOR BLIND DE-TRENDING OF EXOPLANETARY TRANSITS WITH LOW SIGNAL-TO-NOISE
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ON SIGNALS FAINT AND SPARSE: THE ACICA ALGORITHM FOR BLIND DE-TRENDING OF EXOPLANETARY TRANSITS WITH LOW SIGNAL-TO-NOISE

机译:信号的稀疏和稀疏:低信噪比的外向过渡盲态化的ACICA算法

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Independent component analysis (ICA) has recently been shown to be a promising new path in data analysis and de-trending of exoplanetary time series signals. Such approaches do not require or assume any prior or auxiliary knowledge about the data or instrument in order to de-convolve the astrophysical light curve signal from instrument or stellar systematic noise. These methods are often known as "blind-source separation" (BSS) algorithms. Unfortunately, all BSS methods suffer from an amplitude and sign ambiguity of their de-convolved components, which severely limits these methods in low signal-to-noise (S/N) observations where their scalings cannot be determined otherwise. Here we present a novel approach to calibrate ICA using sparse wavelet calibrators. The Amplitude Calibrated Independent Component Analysis (ACICA) allows for the direct retrieval of the independent components' scalings and the robust de-trending of low S/N data. Such an approach gives us an unique and unprecedented insight in the underlying morphology of a data set, which makes this method a powerful tool for exoplanetary data de-trending and signal diagnostics.
机译:最近,独立分量分析(ICA)被证明是数据分析和系外行星时间序列信号去趋势的有希望的新途径。这样的方法不需要或假设没有关于数据或仪器的任何先验或辅助知识,以使来自仪器或恒星的系统噪声的天体光曲线信号反卷积。这些方法通常称为“盲源分离”(BSS)算法。不幸的是,所有BSS方法都存在其去卷积分量的幅度和符号模糊性的问题,这严重限制了这些方法在低信噪比(S / N)观测中的应用,否则无法确定其缩放比例。在这里,我们介绍了一种使用稀疏小波校准器校准ICA的新颖方法。振幅校准独立分量分析(ACICA)允许直接检索独立分量的缩放比例和低信噪比数据的强大去趋势。这种方法使我们对数据集的基本形态有了独特而空前的见解,这使该方法成为行星外数据去趋势和信号诊断的强大工具。

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