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Estimation of Lyapunov spectrum and model selection for a chaotic time series

机译:混沌时间序列的李雅普诺夫谱估计和模型选择

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摘要

The estimation of the Lyapunov spectrum for a chaotic time series is discussed in this study. Three models: the local linear (LL) model; the local polynomial (LP) model and the global radial basis function (RBF) model, are compared for estimating the Lyapunov spectrum in this study. The number of neighbors for training the LL model and the LP model; the number of centers for building the RBF model, have been determined by the generalized degree of freedom for a chaotic time series. The above models have been applied to three artificial chaotic time series and two real-world time series, the numerical results show that the model-chosen LL model provides more accurate estimation than other models for clean data set while the RBF model behaves more robust to noise than other models for noisy data set.
机译:本研究讨论了混沌时间序列的Lyapunov谱的估计。三种模型:局部线性(LL)模型;比较了本地多项式(LP)模型和全局径向基函数(RBF)模型,以估计本研究中的Lyapunov谱。训练LL模型和LP模型的邻居数;建立RBF模型的中心数量已由混沌时间序列的广义自由度确定。以上模型已应用于三个人工混沌时间序列和两个真实时间序列,数值结果表明,对于干净的数据集,模型选择的LL模型比其他模型提供更准确的估计,而RBF模型的行为对于噪声比其他模型要高。

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