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Sliding Eigenvalue Decomposition for Non-stationary Signal Analysis

机译:滑动特征值分解用于非平稳信号分析

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Nowadays, decomposition of multi-component signals has gained popularity in time-frequency analysis (TFA) of non-stationary signals. Eigenvalue decomposition (EVD) is one such technique which decomposes signals into mono-components. In this paper, a new approach named sliding EVD for non-stationary signal decomposition has been proposed. The sliding EVD comprises short duration EVD of signals and an unsupervised grouping of obtained components. This proposed algorithm surpasses other EVD based techniques by successfully decomposing the signals which are overlapped in frequency domain and separated in time-frequency domain. Later, Hilbert spectral analysis has been used on decomposed mono-components for obtaining time-frequency distribution (TFD). At the end, proposed method has been compared with Hilbert Huang transform and is found to be providing better TFD.
机译:如今,多分量信号的分解已在非平稳信号的时频分析(TFA)中得到普及。特征值分解(EVD)是一种将信号分解为单分量的技术。本文提出了一种用于非平稳信号分解的名为滑动EVD的新方法。滑动EVD包括信号的短时EVD和获得组件的无监督分组。通过成功地分解在频域中重叠并且在时频域中分离的信号,该提出的算法超越了其他基于EVD的技术。后来,希尔伯特频谱分析已用于分解的单组分,以获得时频分布(TFD)。最后,将提出的方法与希尔伯特·黄变换进行了比较,发现该方法可以提供更好的TFD。

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