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A novel Roller Bearing Fault Diagnosis Method based on the Wavelet Extreme Learning Machine

机译:基于小波极限学习机的新型滚子轴承故障诊断方法

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The safety and reliability of roller bearing always have significant importance in rotating machinery. It is needful to build an efficient and excellent accuracy method to monitoring and diagnosis the baring failure. A novel method is presented in this paper to classify the fault feature by wavelet function and extreme learning machine (ELM) that take into account the high accuracy and efficient. The morlet wavelet function was constructed as the activation function of ELM neural nodes. In order to construct the best wavelet basis function. The minimum Shannon entropy and SVD methods are used to select the optimal shape factor and scale parameter for the morlet wavelet, respectively. The proposed method is applied to practical classification and fault diagnosis of roller bearing. The result show that the proposed method is more reliable and suitable than conventional neural networks and other ELM methods for the defect diagnosis of roller bearing.
机译:滚子轴承的安全性和可靠性在旋转机械方面始终具有重要意义。需要构建高效且优异的准确性方法,以监测和诊断擦伤衰竭。本文提出了一种新的方法,以通过小波函数和极端学习机(ELM)对故障特征进行分类,以考虑高精度和高效。 Morlet小波函数被构造为ELM神经节点的激活功能。为了构建最佳小波基函数。最小Shannon熵和SVD方法用于分别为Morlet小波的最佳形状因子和比例参数选择。该方法应用于滚子轴承的实际分类和故障诊断。结果表明,该方法比传统的神经网络和其他ELM方法更可靠,适用于用于滚动轴承的缺陷诊断。

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