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An adaptive denoising fault feature extraction method based on ensemble empirical mode decomposition and the correlation coefficient:

机译:基于集合经验模式分解及相关系数的自适应去噪故障特征提取方法:

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Vibration signal processing is commonly used in the mechanical fault diagnosis. It contains abundant working status information. The vibration signal has some features such as non-linear and non-stationary. It has a lot of interference information. Fault information is vulnerable to the impact of the interference information. Empirical mode decomposition denoising method and kurtosis correlation threshold have been widely used in the field of fault diagnosis. But the method mainly depends on the subjective experience, the large number of attempts, and lack of adaptability. In this article, the signals are decomposed into several intrinsic mode functions adaptively with ensemble empirical mode decomposition. The intrinsic mode functions containing the main fault information are selected by the correlation coefficient to emphasize the fault feature and inhibit the normal information. Finally, the energy features of these intrinsic mode functions are taken as inputs of a neural network to identify the fault ...
机译:振动信号处理通常用于机械故障诊断。它包含丰富的工作状态信息。振动信号具有一些特征,例如非线性和非静止。它有很多干扰信息。故障信息容易受到干扰信息的影响。经验模式分解去噪方法和Kurtosis相关阈值已广泛用于故障诊断领域。但该方法主要取决于主观经验,大量的尝试,缺乏适应性。在本文中,通过集合经验模式分解自适应地将信号分解成几种内部模式功能。包含主故障信息的内在模式功能由相关系数选择,以强调故障特征并禁止正常信息。最后,这些内在模式功能的能量特征被视为神经网络的输入,以识别故障......

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