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Fractal analysis of noise buried time series signals with applications to exoplanet spectroscopy and bio-data

机译:噪声埋地时间序列信号的分形分析与Exoplanet光谱和生物数据的应用

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The shape of an exoplanet lightcurve is usually obtained by averaging the noise over multiple datasets. Fractal analysis has been demonstrated to be an effective tool for the detection of exoplanet transits using lightcurves summed over all wavelengths sensitive to the detector (G. Tremberger, Jr et. Al, 2006 Proc SPIE Vol 6265). The detection of spectral features would depend on the extent to which the signal was buried in the noise. Different noise sources would have different fractal characteristics. Also, the signal strength could be discontinuous in time depending on the exoplanet's local atmospheric environment. Such a discontinuity is unlikely to be detected with time integrated data. The lightcurve noise and shape information were characterized with fractal dimension analysis of a noise buried time series signal. Computer simulation revealed that when the noise is three times that of the signal, the fractal algorithm could detect the signal at about the 87% confidence level. Application to noise buried time series datasets (HD 209458b lightcurve, HD 149026b lightcurve) detected discontinuities consistent with the results obtained by averaging datasets. Extension to individual wavelength lightcurves would establish a detection limit for the existence of spectral features at wavelengths important for exoplanet study. Other applications such as pre-implantation genetic screening spectroscopy and spatially varied aneuploidy bio-data could use the same analysis principle as well.
机译:通常通过在多个数据集上平均噪声来获得外部凸起电压的形状。已经证明了分形分析是使用对探测器敏感的所有波长(G. Trember,JR et.Al,2006 Proc Spie Vol 6265)汇总的用于检测Exoplanet转运的有效工具。光谱特征的检测将取决于信号在噪声中埋入的程度。不同的噪声源具有不同的分形特征。此外,根据外延的本地大气环境,信号强度可能是不连续的。随着时间的集成数据,不太可能检测这种不连续性。 LightCurve噪声和形状信息的特征在于具有噪声掩埋时间序列信号的分形尺寸分析。计算机仿真显示,当噪声是信号的三倍时,分形算法可以检测大约87%置信水平的信号。在噪声掩埋时序列数据集(HD 209458B LightCurve,HD 149026B LightCurve)检测到与通过平均数据集获得的结果一致的不连续性。对于各个波长的延伸将建立一个对外部转移研究的波长的光谱特征存在的检测限。其他应用诸如预注入遗传筛查光谱和空间变化的非倍差生物数据也可以使用相同的分析原理。

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