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PMSM Demagnetization Fault Diagnosis Method Based on Fuzzy Intelligent Learning of Torque Signals

机译:基于转矩信号模糊智能学习的永磁同步电机退磁故障诊断方法

摘要

A PMSM demagnetization fault diagnosis method based on fuzzy intelligent learning of torque signals, which includes the following steps of: acquiring torque ripple signals of permanent magnet synchronous motors under different demagnetization faults; calculating a fuzzy membership of the torque ripple signals; decomposing and reconstructing the torque ripple signals by using wavelet packet decomposition to obtain wavelet packet coefficients; calculating the energy of the wavelet packet coefficients, constructing a feature vector sample set with the fuzzy membership, and dividing it into a training set and a test set; constructing Fuzzy Extreme Learning Machine (FELM), and inputting the training set into the FELM for training; inputting the test set into the trained FELM, and calculating classification accuracy. The disclosure solves the problem of unbalanced and irregular training sample distribution by integrating fuzzy theory into the Extreme Learning Machine to fuzzify the torque ripple signal samples under demagnetization fault.
机译:一种基于转矩信号模糊智能学习的永磁同步电机退磁故障诊断方法,包括以下步骤:获取不同退磁故障下永磁同步电机的转矩脉动信号;计算转矩脉动信号的模糊隶属度;对转矩脉动信号进行小波包分解重构,得到小波包系数;计算小波包系数的能量,构造具有模糊隶属度的特征向量样本集,并将其划分为训练集和测试集;构造模糊极限学习机(FELM),并将训练集输入FELM进行训练;将测试集输入训练好的FELM,计算分类精度。本发明通过将模糊理论集成到极限学习机中,使退磁故障下的转矩脉动信号样本模糊化,解决了训练样本分布不平衡和不规则的问题。

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