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Fault Diagnosis of Modular Multilevel Converter Based on RNN and Wavelet Analysis

机译:基于RNN和小波分析的模块化多电平转换器故障诊断

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Modular multilevel converter (MMC) is very common in DC transmission system. But the power electronic components in the MMC sub-module usually fail and affect the operation of the circuit. Consequently, a method of MMC fault diagnosis based on recurrent neural network (RNN) and wavelet analysis is proposed. This proposed method combines the wavelet transform and the energy spectrum entropy to reduce noise interference and extract characteristic signals more effectively. During the experiment, the wavelet transform is used for signal processing, and then the fault signal is extracted by the wavelet entropy. After the fault feature data are obtained, the fault diagnosis model is established by using the RNN. Finally verified by experiment, the validity and the high accuracy of the new method are showed by comparing with the method based on the RNN and the BP with wavelet analysis.
机译:模块化多电平转换器(MMC)在直流传输系统中很常见。但是MMC子模块中的电力电子元件通常会发生故障并影响电路的操作。因此,提出了一种基于经常性神经网络(RNN)和小波分析的MMC故障诊断方法。该提出的方法将小波变换和能谱熵组合以更有效地降低噪声干扰并提取特性信号。在实验期间,小波变换用于信号处理,然后通过小波熵提取故障信号。在获得故障特征数据之后,使用RNN建立故障诊断模型。最后通过实验验证,通过与基于RNN和BP的方法进行比较,显示了新方法的有效性和高精度。

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