期刊文献+

Generalized Multivariate Singular Spectrum Analysis for Nonlinear Time Series De-Noising and Prediction

Generalized Multivariate Singular Spectrum Analysis for Nonlinear Time Series De-Noising and Prediction
下载PDF
导出
摘要 Singular spectrum analysis and its multivariate or multichannel singular spectrum analysis(MSSA)variant are effective methods for time series representation,denoising and prediction,with broad application in many fields.However,a key element in MSSA is singular value decomposition of a high-dimensional matrix stack of component matrices,where the spatial(structural)information among multivariate time series is lost or distorted.This vector-space model also leads to difficulties including high dimensionality,small sample size,and numerical instability when applied to multi-dimensional time series.We present a generalized multivariate singular spectrum analysis(GMSSA)method to simultaneously decompose multivariate time series into constituent components,which can overcome the limitations of conventional multivariate singular spectrum analysis.In addition,we propose a Samp En-based method to determine the dominant components in GMSSA.We demonstrate the effectiveness and efficiency of GMSSA to simultaneously de-noise multivariate time series for attractor reconstruction,and to predict both simulated and real-world multivariate noisy time series. Singular spectrum analysis and its multivariate or multichannel singular spectrum analysis(MSSA)variant are effective methods for time series representation,denoising and prediction,with broad application in many fields.However,a key element in MSSA is singular value decomposition of a high-dimensional matrix stack of component matrices,where the spatial(structural)information among multivariate time series is lost or distorted.This vector-space model also leads to difficulties including high dimensionality,small sample size,and numerical instability when applied to multi-dimensional time series.We present a generalized multivariate singular spectrum analysis(GMSSA)method to simultaneously decompose multivariate time series into constituent components,which can overcome the limitations of conventional multivariate singular spectrum analysis.In addition,we propose a Samp En-based method to determine the dominant components in GMSSA.We demonstrate the effectiveness and efficiency of GMSSA to simultaneously de-noise multivariate time series for attractor reconstruction,and to predict both simulated and real-world multivariate noisy time series.
作者 吉奕 谢洪波
出处 《Chinese Physics Letters》 SCIE CAS CSCD 2017年第12期11-15,共5页 中国物理快报(英文版)
基金 Supported by the Priority Academic Program Development of Jiangsu Higher Education Institutions(PAPD)
  • 相关文献

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部