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Fault Diagnosis Method Based on Wavelet Neural Network for Power System Turbo-Generator

机译:基于小波神经网络的电力系统汽轮发电机故障诊断方法

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An effective method for composite fault diagnosis based on integration of wavelet transform and neural networks is presented. The fault diagnosis model of turbogenerator set is established and a new method of detecting fault symptom signal based on discrete binary wavelet transform is discussed. Wavelet transform is used to extract effect character vector which is sent to neural networks to complete pattern recognition. With sufficient samples training, the type of fault mode can be obtained when signal representing fault is inputted to the trained neural networks. The diagnosis result approves to be accurate and comprehensive. The method can be generalized to other devices'' fault diagnosis.
机译:提出了一种基于小波变换与神经网络相结合的复合故障诊断的有效方法。建立了汽轮发电机组的故障诊断模型,探讨了一种基于离散二进制小波变换的故障征兆信号检测新方法。小波变换用于提取效果特征向量,并将其发送到神经网络以完成模式识别。通过足够的样本训练,当表示故障的信号输入到经过训练的神经网络时,可以获得故障模式的类型。诊断结果批准是准确而全面的。该方法可以推广到其他设备的故障诊断中。

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