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Cascaded H-Bridge Multilevel Inverter System Fault Diagnosis Using a PCA and Multiclass Relevance Vector Machine Approach

机译:基于PCA和多类关联向量机的级联H桥多电平逆变系统故障诊断。

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摘要

Multilevel inverters, for their distinctive performance, have been widely used in high voltage and high-power applications in recent years. As power electronics equipment reliability is very important and to ensure multilevel inverter systems stable operation, it is important to detect and locate faults as quickly as possible. In this context and to improve fault diagnosis accuracy and efficiency of a cascaded H-bridge multilevel inverter system (CHMLIS), a fault diagnosis strategy based on the principle component analysis and the multiclass relevance vector machine (PCA-mRVM), is elaborated and proposed in this paper. First, CHMLIS output voltage signals are selected as input fault classification characteristic signals. Then, a fast Fourier transform is used to preprocess these signals. PCA is used to extract fault signals features and to reduce samples dimensions. Finally, an mRVM model is used to classify faulty samples. Compared to traditional approaches, the proposed PCA-mRVM strategy not only achieves higher model sparsity and shorter diagnosis time, but also provides probabilistic outputs for every class membership. Experimental tests are carried out to highlight the proposed PCA-mRVM diagnosis performances.
机译:近年来,多电平逆变器以其独特的性能已被广泛用于高压和大功率应用中。由于电力电子设备的可靠性非常重要,并且要确保多级逆变器系统稳定运行,因此尽快检测和定位故障非常重要。在此背景下,为提高级联H桥多电平逆变器系统(CHMLIS)的故障诊断精度和效率,提出并提出了一种基于主成分分析和多类相关矢量机(PCA-mRVM)的故障诊断策略。在本文中。首先,选择CHMLIS输出电压信号作为输入故障分类特征信号。然后,使用快速傅里叶变换对这些信号进行预处理。 PCA用于提取故障信号特征并减小样本尺寸。最后,使用mRVM模型对故障样本进行分类。与传统方法相比,提出的PCA-mRVM策略不仅实现了更高的模型稀疏性和更短的诊断时间,而且还为每个班级成员提供了概率输出。进行实验测试以突出提出的PCA-mRVM诊断性能。

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