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Detecting determinism in time series: the method of surrogate data

机译:检测时间序列中的确定性:替代数据的方法

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We review a relatively new statistical test that may be applied to determine whether an observed time series is inconsistent with a specific class of dynamical systems. These surrogate data methods may test an observed time series against the hypotheses of: i) independent and identically distributed noise; ii) linearly filtered noise; and iii) a monotonic nonlinear transformation of linearly filtered noise. A recently suggested fourth algorithm for testing the hypothesis of a periodic orbit with uncorrelated noise is also described. We propose several novel applications of these methods for various engineering problems, including: identifying a deterministic (message) signal in a noisy time series; and separating deterministic and stochastic components. When employed to separate deterministic and noise components, we show that the application of surrogate methods to the residuals of nonlinear models is equivalent to fitting that model subject to an information theoretic model selection criteria.
机译:我们回顾了一个相对较新的统计检验,该检验可用于确定观察到的时间序列是否与特定类别的动力系统不一致。这些替代数据方法可以根据以下假设检验观察到的时间序列:i)独立且均匀分布的噪声; ii)线性滤波的噪声; iii)线性滤波噪声的单调非线性变换。还介绍了最近建议的第四种算法,用于测试具有不相关噪声的周期性轨道的假设。我们针对这些工程问题提出了这些方法的几种新颖应用,包括:识别嘈杂时间序列中的确定性(消息)信号;以及将确定性和随机性成分分开。当用于分离确定性分量和噪声分量时,我们证明了将替代方法应用于非线性模型的残差等同于根据信息理论模型选择标准对模型进行拟合。

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