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Compound Fault Diagnosis of Rolling Bearing Based on ALIF-KELM

机译:基于ALIF-KELM的滚动轴承复合故障诊断

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摘要

Aiming at the shortcomings of difficult classification of rolling bearing compound faults and low recognition accuracy, a composite fault diagnosis method of rolling bearing combined with ALIF and KELM is proposed. First, the basic concepts of ALIF and KELM are introduced, and then ALIF is used to decompose the sample data of vibration signals of different bearing states so that each sample can get several IMFs, select the top K IMFs containing the main fault information from each sample, calculate the energy feature and sample entropy of each IMF, and construct a fault feature vector with a dimension of 2K. Finally, the feature vectors of the training set and the test set are input into the KELM model for fault classification. Experimental results show that, compared with EMD-KELM model, ALIF-ELM model, ALIF-BP model, and IFD-KELM model, the rolling bearing composite fault diagnosis method based on the ALIF-KELM model has higher classification accuracy.
机译:针对滚动轴承复合故障分类困难、识别精度低的缺点,提出一种结合ALIF和KELM的滚动轴承复合故障诊断方法。首先介绍了ALIF和KELM的基本概念,然后利用ALIF对不同轴承状态的振动信号的样本数据进行分解,使每个样本能够得到多个IMF,从每个样本中选出包含主要故障信息的前K IMF,计算每个IMF的能量特征和样本熵, 并构造一个维数为2K的故障特征向量。最后,将训练集和测试集的特征向量输入到KELM模型中进行故障分类。实验结果表明,与EMD-KELM模型、ALIF-ELM模型、ALIF-BP模型和IFD-KELM模型相比,基于ALIF-KELM模型的滚动轴承复合故障诊断方法具有更高的分类精度。

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