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IGBT Open Circuit Fault Diagnosis Method for a Modular Multilevel Converter Based on PNN-MD

机译:基于PNN-MD的模块化多电平转换器的IGBT开路故障诊断方法

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Modular multilevel converter (MMC) is an important part of high voltage direct current (HVDC) transmission system. With the increase of the number of submodules in series, the open circuit failure of IGBT is the most common fault type of MMC. Therefore, it is necessary to study IGBT open circuit fault diagnosis of MMC. The diagnosis method of IGBT open circuit faults for MMC is proposed based on probabilistic neural network (PNN) and Markovian distance (MD) algorithm to further improve the reliability of MMC. The fault diagnosis model based on PNN-MD theory is established by using Matlab/Simulink software. Then the MMC circuit model is established by using PSIM circuit model. The voltage and current characteristic values of each sub module circuit in normal working state and IGBT open circuit state are collected. Meanwhile, these values are used as training samples and input into pnn-md for training. Through simulation, compared with the application of BP neural network in fault diagnosis, the PNN-MD algorithm can diagnose IGBT open circuit fault of MMC faster and more accurately. The innovation of this paper is to combine machine learning with MMC fault diagnosis, and has a broad application prospect.
机译:模块化多电平转换器(MMC)是高压直流(HVDC)传输系统的重要组成部分。随着串联子模块数量的增加,IGBT的开路故障是MMC最常见的故障类型。因此,有必要研究MMC的IGBT开路故障诊断。基于概率神经网络(PNN)和马尔科夫距离(MD)算法,提出了MMC的IGBT开路故障的诊断方法,以进一步提高MMC的可靠性。基于PNN-MD理论的故障诊断模型采用Matlab / Simulink软件建立。然后使用PSIM电路模型建立MMC电路模型。收集正常工作状态和IGBT开路状态下每个子模块电路的电压和电流特性值。同时,这些值用作训练样本并输入PNN-MD进行培训。通过模拟,与BP神经网络在故障诊断中的应用相比,PNN-MD算法可以更快更准确地诊断MMC的IGBT开路故障。本文的创新是将机器学习与MMC故障诊断相结合,并具有广泛的应用前景。

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