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Nonlinear time series analysis of Kepler Space Telescope data: Mutually beneficial progress

机译:开普勒太空望远镜数据的非线性时间序列分析:互惠互利的进展

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Nonlinear time series analysis, though a powerful tool, has not been used widely in astronomy and astro-physics because the principle requirements that the data be sampled uniformly and continuous are rarely met. Kepler Space Telescope variable-star light curves satisfy these and almost all other requirements. These data have allowed a more systematic study of the methodology and yielded new information. Nonlinear noise reduction is the aspect we focus on here. Nonlinear time series power spectra often have relevant information across all the frequencies in a spectrum. As opposed to traditional filtering that results in a loss of information at the high frequencies, nonlinear local projective noise reduction allows us to significantly reduce noise while keeping high-frequency information. Nonlinear noise reduction is discussed for a number of Kepler Space Telescope targets with different power-spectral characteristics. The extremely high quality of the Kepler data has also allowed us to explore the novel use of average mutual information (AMI) for distinguishing signal from noise in broadband spectra. We report on noise reduction for targets with power spectra that contain a fundamental and harmonics, power spectra with no such lines and spectra with high-frequency lines (? 2012 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim)
机译:非线性时间序列分析虽然是一种功能强大的工具,但由于很少满足对数据进行均匀且连续采样的原理要求,因此尚未在天文学和天体物理学中得到广泛应用。开普勒太空望远镜的变星光曲线可以满足这些以及几乎所有其他要求。这些数据允许对该方法进行更系统的研究并产生新的信息。非线性降噪是我们在此关注的方面。非线性时间序列功率频谱通常在频谱中的所有频率上都具有相关信息。与导致高频信息丢失的传统滤波相反,非线性局部投影降噪技术使我们能够在保持高频信息的同时显着降低噪声。针对具有不同功率谱特性的许多开普勒太空望远镜目标,讨论了非线性降噪。开普勒数据的极高品质也使我们能够探索平均互信息(AMI)在宽带频谱中将信号与噪声区分开的新颖用途。我们针对具有包含基本和谐波功率谱的目标,没有此类谱线的功率谱和具有高频谱线的功率谱报告目标的降噪(?2012 WILEY-VCH Verlag GmbH&Co. KGaA,Weinheim)

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