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首页> 外文期刊>Signal Processing, IET >Recursive spectral analysis of natural time series based on eigenvector matrix perturbation for online applications
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Recursive spectral analysis of natural time series based on eigenvector matrix perturbation for online applications

机译:基于特征向量矩阵摄动的自然时间序列递归谱分析

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摘要

Singular spectrum analysis (SSA) is a well-studied approach in signal processing. SSA has originally been designed to extract information from short noisy chaotic time series and to enhance the signal-to-noise ratio. SSA is good for offline applications; however, many applications, such as modelling, analysis, and prediction of time-varying and non-stationary time series, demand for online analysis. This study introduces a recursive algorithm called recursive SSA as a modification to regular SSA for dynamic and online applications. The proposed method is based on eigenvector matrix perturbation approach. After recursively calculating the covariance matrix of the trajectory matrix, R-SSA updates the eigenvalues and eigenvectors for new samples by considering the effect of the new sample as perturbation in the covariance matrix and its singular value decomposition. The eigenvalues and eigenvectors adapt simultaneously to track their true values as would be calculated from the current covariance matrix. Analysis of two well-known chaotic time series: Mackey-Glass and Lorenz chaotic time series and two natural time series: Darwin sea-level pressure and Sunspot number as non-stationary processes are considered in this study to examine the performance of the proposed recursive method. The obtained results depict the power of the proposed method in online spectral analysis of non-linear time-varying systems.
机译:奇异频谱分析(SSA)是信号处理中经过充分研究的方法。 SSA最初被设计为从短噪声混沌时间序列中提取信息并增强信噪比。 SSA非常适合离线应用程序;但是,许多应用程序,例如时变和非平稳时间序列的建模,分析和预测,都需要进行在线分析。本研究介绍了一种称为递归SSA的递归算法,作为对动态和在线应用程序常规SSA的修改。该方法基于特征向量矩阵摄动法。在递归计算轨迹矩阵的协方差矩阵之后,R-SSA通过考虑新样本在协方差矩阵中的扰动及其奇异值分解,来更新新样本的特征值和特征向量。特征值和特征向量同时适应跟踪它们的真实值,这将根据当前协方差矩阵进行计算。本研究考虑了两个著名的混沌时间序列:Mackey-Glass和Lorenz混沌时间序列以及两个自然时间序列:达尔文海平面压力和太阳黑子数作为非平稳过程,以检验所提出的递归算法的性能方法。获得的结果说明了该方法在非线性时变系统在线光谱分析中的强大功能。

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