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Research Of Mechanical Vibration Signal Classification Based On LMD

机译:基于LMD的机械振动信号分类研究

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The traditional signal processing methods are difficult to accurately extract fault information, because mechanical fault vibration signals have non-stationary, which will cause system instability. Local mean decomposition is adaptive signal processing method. However, in the local mean decomposition of the signal, the trend of the endpoint can not be predicted which cause contaminating the entire signal sequence, the original moving average of the signal used over-smoothing treatment, resulting in fault characteristics can not accurately extract. The article introduces waveform matching to solve the original features of signals at the endpoints, using linear interpolation to get local mean and envelope function, then obtain production function PF vector through making use of the local mean decomposition. The energy entropy of PF vector take as identification input vectors. These vectors are respectively inputted BP neural networks, support vector machines, least squares support vector machines to identify faults. Experimental result show that the accuracy of least squares support vector machine with higher classification accuracy has been improved.
机译:传统的信号处理方法难以准确地提取故障信息,因为机械故障振动信号具有非静止,这将导致系统不稳定性。局部均值分解是自适应信号处理方法。但是,在信号的局部平均分解中,终点的趋势不能预测,导致污染整个信号序列,信号的原始移动平均值过度平滑处理,导致故障特性不能精确提取。该文章介绍了波形匹配,以解决端点处的信号的原始特征,使用线性插值来获取本地均值和包络功能,然后通过使用局部平均分解来获得生产函数PF向量。 PF矢量的能量熵作为识别输入向量。这些向量分别输入了BP神经网络,支持向量机,最小二乘支持向量机识别故障。实验结果表明,具有较高分类精度的最小二乘支持向量机的准确性得到了改进。

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