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Recurrent Neural Network Based On-line Fault Diagnosis Approach for Power Electronic Devices

机译:基于经常性神经网络的电力电子设备基于线路故障诊断方法

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294 fault patterns of 12-pulse waveform controlled rectifier circuit (CRC) are studied firstly; a special fault classification method according to the rectifier aberrant voltage waveforms is put forward then. 12- dimension fault patterns and the corresponding fault codes are obtained through logic pre-processing of the fault rectifier voltage waveforms. A recurrent neural network (RNN) with deviation error units is used to construct a fault mapping. The fault patterns are used as the input of the network, after being calculated by the neural network the 12-dimension fault codes are obtained to indicate the fault state of the system. Simulation and experiment study demonstrate that the proposed technique is low time consuming with high fault identification rate, it improves the performance of the existing neural network based on-line fault diagnosis methods effectively. The proposed method is suitable for the fault diagnosis of complex power electronic devices or systems.
机译:第294研究了12脉冲波形控制整流电路(CRC)的故障模式;然后提出了根据整流器异常电压波形的特殊故障分类方法。通过故障整流电压波形的逻辑预处理获得12尺寸故障模式和相应的故障码。具有偏差误差单元的经常性神经网络(RNN)来构造故障映射。故障模式用作网络的输入,在通过神经网络计算之后,获得12维故障码以指示系统的故障状态。仿真和实验研究表明,该技术具有高故障识别率的低耗时,它提高了现有神经网络的基于线路故障诊断方法的性能。所提出的方法适用于复杂电力电子设备或系统的故障诊断。

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