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Fault diagnosis of rotating machines based on the EMD manifold

机译:基于EMD歧管的旋转机械故障诊断

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One challenge of the existing noise-assisted methods for solution of mode mixing problem of empirical mode decomposition (EMD) is that, the decomposed modes contain much residual noise derived from both added and self-contained noise. This paper proposes a new noise-assisted method, called EMD manifold (EMDM), for enhanced fault diagnosis of rotating machines. The major contribution is that the new method nonlinearly and adap-tively fuses the fault-related modes containing different noise via a manifold learning algorithm, by which true fault-related transients are preserved, while fault-unrelated components including mode-mixing-induced components and the residual noise derived from both the added and self-contained noise are greatly suppressed. First, the sensitive mode is located among the modes obtained by the EMD method according to a newly proposed criterion. Then, a high-dimensional matrix is constructed of the sensitive modes obtained through a small number of EMD trials on the signals plus noise of different amplitudes. Finally, the manifold learning algorithm is performed on the high-dimensional matrix to extract intrinsic manifold of the fault-related transients. The high-dimensional matrix is repeatedly constructed with random noise added to adjust local data distribution of the matrix for adaptive EMDM feature learning. Experimental studies on gearbox and bearing faults are conducted to validate the proposed method and its enhanced performance over traditional noise-assisted EMD methods.
机译:现有的用于解决经验模态分解(EMD)的模式混合问题的噪声辅助方法的一个挑战是,分解后的模态包含许多来自加和自包含噪声的残余噪声。本文提出了一种新的噪声辅助方法,称为EMD歧管(EMDM),用于增强旋转机械的故障诊断能力。主要的贡献在于,该新方法通过流形学习算法非线性自适应地融合了包含不同噪声的故障相关模式,从而保留了与故障相关的真实瞬态,而与故障无关的组件(包括模式混合引起的组件)并大大抑制了由相加噪声和自包含噪声所产生的残余噪声。首先,根据新提出的标准,敏感模式位于通过EMD方法获得的模式之中。然后,通过对信号加上不同幅度的噪声进行少量的EMD试验获得的敏感模式构成一个高维矩阵。最后,在高维矩阵上进行流形学习算法,以提取故障相关瞬变的内在流形。重复构建高维矩阵,添加随机噪声以调整矩阵的本地数据分布,以进行自适应EMDM特征学习。进行了齿轮箱和轴承故障的实验研究,以验证该方法及其相对于传统的噪声辅助EMD方法的增强性能。

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