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Distinguishing chaotic time series from noise: A random matrix approach

机译:从噪声中区分混沌时间序列:随机矩阵方法

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Deterministically chaotic systems can often give rise to random and unpredictable behaviors which make the time series obtained from them to be almost indistinguishable from noise. Motivated by the fact that data points in a chaotic time series will have intrinsic correlations between them, we propose a random matrix theory (RMT) approach to identify the deterministic or stochastic dynamics of the system. We show that the spectral distributions of the correlation matrices, constructed from the chaotic time series, deviate significantly from the predictions of random matrix ensembles. On the contrary, the eigenvalue statistics for a noisy signal follow closely those of random matrix ensembles. Numerical results also indicate that the approach is to some extent robust to additive observational noise which pollutes the data in many practical situations. Our approach is efficient in recognizing the continuous chaotic dynamics underlying the evolution of the time series. (C) 2016 Elsevier B.V. All rights reserved.
机译:确定性混沌系统通常会引起随机且不可预测的行为,从而使从它们获得的时间序列与噪声几乎无法区分。基于一个事实,即混沌时间序列中的数据点之间将具有内在联系,因此,我们提出了一种随机矩阵理论(RMT)方法来识别系统的确定性或随机动力学。我们表明,从混沌时间序列构建的相关矩阵的频谱分布明显偏离了随机矩阵集合的预测。相反,噪声信号的特征值统计紧随随机矩阵集成的特征值统计。数值结果还表明,该方法在某种程度上对附加的观测噪声具有鲁棒性,而后者在许多实际情况下都会污染数据。我们的方法有效地识别了时间序列演化背后的连续混沌动力学。 (C)2016 Elsevier B.V.保留所有权利。

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