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A fault diagnosis approach for roll bearing based on wavelet-SOFM network

机译:基于小波 - SOFM网络的滚动轴承故障诊断方法

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摘要

A novel method of pattern recognition and fault diagnosis in roll bearing based on the wavelet-neural network is proposed according to the frequency spectrum characteristics of vibration signal. Based on the advantage of multi-dimensional multi-scaling decomposition of wavelet packets,the abrupt change information can be obtained and the features related to the fault of roll bearing is extracted through the decomposing and reconstruction of the vibration sign of the roll bearing. The extract features are inputted into SOFM to realize the automatic classification of the fault. The trained SOFM can be used to the online state monitor and real-time fault diagnosis of roll bearing. The feasibility of this novel method is proved by the simulation results.
机译:基于振动信号的频谱特性,提出了一种基于小波神经网络的滚动轴承的模式识别和故障诊断的新方法。基于小波包的多维多缩放分解的优点,可以获得突然的改变信息,并且通过辊轴承的振动符号的分解和重建来提取与滚动轴承故障有关的特征。提取特征被输入到SOFM中以实现故障的自动分类。培训的SOFM可用于在线状态监测和滚动轴承的实时故障诊断。通过模拟结果证明了这种新方法的可行性。

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