Vibration diagnosis method based on wavelet analysis and neural network for turbine-generator

Pang Peilin, Ding Guangbin
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引用次数: 4

Abstract

The turbine-generator plays a crucial rule in modern industrial plant. The risk of turbine-generator set failure can be remarkably reduced if normal service condition can be arranged in advance. An effective approach based on wavelet neural network is presented for vibration signal analysis and fault diagnosis. The wavelet transform exhibits not only more comprehensive results, but also delivers a variety of possible explanations to the investigated problem. The main advantage of wavelet transform for signal analysis is that the wavelet coefficients are obtained by correlating vibration signal with the wavelet basis functions so that all possible fault patterns can be displayed by time-scale results. The feature vector obtained from wavelet transform coefficients are presented as input vector for neural network. The improved training algorithm is used to fulfill network training process and parameter initialization. From the output values of the neural network, the fault pattern is identified in accordance with the predefined fault feature vectors, which are obtained from practical experience. At the meantime, the convergence property of wavelet network for fault diagnosis is discussed. The experiment results demonstrate that the proposed method is effective and accurate.
基于小波分析和神经网络的汽轮发电机振动诊断方法
汽轮发电机在现代工业装置中起着至关重要的作用。如果能提前安排好机组的正常运行条件,可以显著降低机组故障的风险。提出了一种基于小波神经网络的振动信号分析与故障诊断方法。小波变换不仅显示出更全面的结果,而且对所研究的问题提供了多种可能的解释。小波变换用于信号分析的主要优点是将振动信号与小波基函数相关联得到小波系数,从而可以用时间尺度结果显示所有可能的故障模式。将小波变换系数得到的特征向量作为神经网络的输入向量。采用改进的训练算法完成网络的训练过程和参数初始化。从神经网络的输出值中,根据从实际经验中获得的预定义故障特征向量来识别故障模式。同时,讨论了小波网络在故障诊断中的收敛性。实验结果证明了该方法的有效性和准确性。
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