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The Sliding Singular Spectrum Analysis: A Data-Driven Nonstationary Signal Decomposition Tool

机译:滑动奇异频谱分析:一种数据驱动的非平稳信号分解工具

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Singular spectrum analysis (SSA) is a signal decomposition technique that aims at expanding signals into interpretable and physically meaningful components (e.g., sinusoids, noise, etc.). This paper presents new theoretical and practical results about the separability of the SSA and introduces a new method called sliding SSA. First, the SSA is combined with an unsupervised classification algorithm to provide a fully automatic data-driven component extraction method for which we investigate the limitations for components separation in a theoretical study. Second, the detailed automatic SSA method is used to design an approach based on a sliding analysis window, which provides better results than the classical SSA method when analyzing nonstationary signals with a time-varying number of components. Finally, the proposed sliding SSA method is compared to the empirical mode decomposition and to the synchrosqueezed short-time Fourier transform, applied on both synthetic and real-world signals.
机译:奇异频谱分析(SSA)是一种信号分解技术,旨在将信号扩展为可解释且对身体有意义的分量(例如正弦波,噪声等)。本文介绍了有关SSA可分离性的新理论和实践结果,并介绍了一种称为滑动SSA的新方法。首先,SSA与无监督分类算法相结合,提供了一种全自动的数据驱动的成分提取方法,在理论研究中,我们针对该方法研究了成分分离的局限性。其次,使用详细的自动SSA方法来设计基于滑动分析窗口的方法,当分析具有时变数量的分量的非平稳信号时,该方法比传统的SSA方法提供更好的结果。最后,将所提出的滑动SSA方法与经验模态分解和同步压缩的短时傅立叶变换进行了比较,将其应用于合成信号和真实信号。

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