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Neural network based cycloconverter fault detection using wavelet decomposition

机译:基于神经网络的基于基于的CycloConverter故障检测使用小波分解

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Power electronic devices may fail to function normally due to unexpected breakdown of various power electronic component. This fact motivates to find an effective but simple technique for real time diagnosis of component failure in cycloconverter, which is commonly used in industry to vary the speed of an by means of controlling its frequency. Wavelet decomposition method is employed for detecting faulty component path by extracting the substantial signatures from the output waveforms across the load end of cycloconverter. Backpropagation multilayer perceptron(BPMLP) based artificial neural network(ANN) and probabilistic neural network(PNN) are used to correctly distinguish the faulty path including two power MOSFET in the cycloconverter. Results indicate high classification accuracy at most of 99.9%. The proposed method will also minimize the fault removal time and hence maintain the production consistency in the industry.
机译:由于各种电力电子元件的意外故障,电力电子设备可能无法正常运行。这一事实激发了用于找到一种有效但简单的技术,用于实时诊断环逆变器中的组件失效,这通常用于工业中通过控制其频率来改变速度。小波分解方法用于通过从环形变频器的负载端中提取来自输出波形的实质符号来检测故障分量路径。基于BackPropagation Multilayer Perceptron(BPMLP)的人工神经网络(ANN)和概率神经网络(PNN)用于正确地区分包括在循环变频器中的两个功率MOSFET的故障路径。结果最高99.9 %的高分类准确性。该方法还将最小化故障去除时间,从而保持行业的生产一致性。

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