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首页> 外文期刊>Journal of Computers >Fault Diagnosis System for NPC Inverter based on Multi-Layer Principal Component Neural Network
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Fault Diagnosis System for NPC Inverter based on Multi-Layer Principal Component Neural Network

机译:基于多层主成分神经网络的NPC逆变器故障诊断系统

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摘要

—This paper presents a fault diagnosis method for a neutral point clamped (NPC) inverter using a multi-layer artificial neural network (MANN). The considered possible faults of NPC inverter include the open-circuit fault occurring in one single device or more devices. The upper, middle and down bridge voltages are adopted the test signals because of the difficulties in isolating some fault modes. A novel multi-layer neural network is proposed to diagnose all possible open-circuit faults. Furthermore, the principal component analysis (PCA) is utilized to reduce the input size of neural network. The comparison between neural network with and without PCA is performed. The simulation and experimental results prove the feasibility of the diagnostic method and show that the proposed method has the advantages of good classification performance and high reliability.
机译:- 本文介绍了使用多层人工神经网络(MANN)的中性点钳位(NPC)逆变器的故障诊断方法。 NPC逆变器的所认为可能的故障包括在一个设备或更多设备中发生的开路故障。由于隔离某些故障模式的困难,因此采用了上下桥电压,采用了测试信号。提出了一种新型的多层神经网络来诊断所有可能的开路故障。此外,利用主成分分析(PCA)来降低神经网络的输入大小。具有和无需PCA的神经网络之间的比较。模拟和实验结果证明了诊断方法的可行性,并表明该方法具有良好的分类性能和高可靠性的优点。

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