基于多分类相关向量机的MMC多相故障诊断关键技术
Key technologies of MMC multiphase fault diagnosis based on a multi class correlation vector machine
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摘要: 模块化多电平转换器拓扑结构复杂,当不同相子模块发生故障时,传统诊断方法只检测单个子模块故障,无法识别多相子模块故障。提出了一种多分类相关向量机算法用于模块化多电平换流器的多相故障诊断,对三相电压的时频数据进行傅立叶变换,以获取三相电压的频域数据,使用频域中的典型低次谐波分量作为故障特征量,采用多分类相关向量机算法进行故障分类。通过与传统故障诊断方法的仿真比较,验证了该方法的有效性和准确性。仿真结果表明,该方法在训练精度和测试精度上均优于传统的故障诊断方法,训练精度达到99.2%,测试精度达到99.4%,具有一定的应用价值。Abstract: The topology of a modular multilevel converter is complex. When different phase sub modules fail, the traditional diagnosis method only detects the fault of a single sub module and cannot identify the multi-phase sub module fault. A multi class correlation vector machine algorithm is proposed for multi-phase fault diagnosis of a modular multilevel converter. The time-frequency data of three-phase voltage are transformed by Fourier transform to obtain the frequency domain data of the voltage. The typical low-order harmonic components in the frequency domain are used as the fault feature, and the multi classification correlation vector machine algorithm is used for fault classification. Through simulation of comparison with the traditional fault diagnosis method, the effectiveness and accuracy of the method are verified. The simulation results show that the proposed method is superior to the traditional fault diagnosis methods in training and testing accuracy. The training accuracy reaches 99.2%, and the test accuracy reaches 99.4%. It has a certain application value.