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Fault diagnosis method based on wavelet packet-energy entropy and fuzzy kernel extreme learning machine:

机译:基于小波包能量熵和模糊核极限学习机的故障诊断方法:

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摘要

Aiming at connatural limitations of extreme learning machine in practice, a new fault diagnosis method based on wavelet packet-energy entropy and fuzzy kernel extreme learning machine is proposed. On one hand, the presented method can extract the more efficient features using the wavelet packet-energy entropy method, and on the other hand, the sample fuzzy membership degree matrix U, weight matrix W which is used to describe the sample imbalance, and the kernel function are introduced to construct the fuzzy kernel extreme learning machine model with high accuracy and reliability. The experimental results of rolling bearing and check valve are obtained and analyzed in MATLAB 2010b. The results show that the proposed fuzzy kernel extreme learning machine method can obtain fairly or slightly better classification performance than the traditional extreme learning machine, kernel extreme learning machine, back propagation, support vector machine, and fuzzy support vector machine.
机译:针对实践中极限学习机的固有局限性,提出了一种基于小波包能量熵和模糊核极限学习机的故障诊断新方法。一方面,所提出的方法可以使用小波包能量熵方法提取更有效的特征,另一方面,使用样本模糊隶属度矩阵U,用于描述样本不平衡的权重矩阵W和通过引入核函数来构建具有高精度和可靠性的模糊核极限学习机模型。获得了滚动轴承和止回阀的实验结果,并在MATLAB 2010b中进行了分析。结果表明,所提出的模糊核极限学习机方法与传统的极限学习机,核极限学习机,反向传播,支持向量机和模糊支持向量机相比,可获得较好的分类效果。

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