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Symplectic geometry mode decomposition and its application to rotating machinery compound fault diagnosis

机译:辛几何模式分解及其在旋转机械复合故障诊断中的应用

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摘要

Various existed time-series decomposition methods, including wavelet transform, ensemble empirical mode decomposition (EEMD), local characteristic-scale decomposition (LCD), singular spectrum analysis (SSA), etc., have some defects for nonlinear system signal analysis. When the signal is more complex, especially noisy signal, the component signal is forced to decompose into several incomplete components by LCD and SSA. In addition, the wavelet transform and EEMD need user-defined parameters, and they are very sensitive to the parameters. Therefore, a new signal decomposition algorithm, symplectic geometry mode decomposition (SGMD), is proposed in this paper to decompose a time series into a set of independent mode components. SGMD uses the symplectic geometry similarity transformation to solve the eigenvalues of the Hamiltonian matrix and reconstruct the single component signals with its corresponding eigenvectors. Meanwhile, SGMD can efficiently reconstruct the existed modes and remove the noise without any user-defined parameters. The essence of this method is that signal decomposition is converted into symplectic geometry transformation problem, and the signal is decomposed into a set of symplectic geometry components (SGCs). The analysis results of simulation signals and experimental signals indicate that the proposed time-series decomposition approach can decompose the analyzed signals accurately and effectively. (C) 2018 Elsevier Ltd. All rights reserved.
机译:小波变换,整体经验模态分解(EEMD),局部特征尺度分解(LCD),奇异频谱分析(SSA)等各种现有的时间序列分解方法都存在一些非线性系统信号分析的缺陷。当信号更复杂时,尤其是噪声信号,LCD和SSA会迫使分量信号分解为几个不完整的分量。另外,小波变换和EEMD需要用户定义的参数,并且它们对参数非常敏感。因此,本文提出了一种新的信号分解算法,即辛几何模式分解(SGMD),将时间序列分解为一组独立的模式分量。 SGMD使用辛几何相似性变换来求解哈密顿矩阵的特征值,并使用其对应的特征向量重构单分量信号。同时,SGMD可以有效地重构现有模式并消除噪声,而无需任何用户定义的参数。该方法的本质是将信号分解转换为辛几何变换问题,并将信号分解为一组辛几何分量(SGC)。仿真信号和实验信号的分析结果表明,所提出的时间序列分解方法能够准确,有效地分解分析信号。 (C)2018 Elsevier Ltd.保留所有权利。

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