首页> 外文期刊>International Journal of Engineering Science and Technology >ANN BASED FAULT DIAGNOSIS OF ROLLING ELEMENT BEARING USING TIME-FREQUENCY DOMAIN FEATURE
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ANN BASED FAULT DIAGNOSIS OF ROLLING ELEMENT BEARING USING TIME-FREQUENCY DOMAIN FEATURE

机译:时域特征的基于神经网络的滚动轴承故障诊断

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This paper presents a methodology for an automation of fault diagnosis of ball bearings having localized defects (spalls) on the various bearing components. The system uses the wavelet packet decomposition using rbio5.5 real mother wavelet function for feature extraction from the vibration signal, recorded for various bearing fault conditions. The decomposition level is determined by the sampling frequency and characteristic defect frequency. Maximum energy to minimum Shannon entropy ratio criteria is used for selection of best node of wavelet packet tree. The two features kurtosis and energy are extracted from the wavelet packet coefficient for selected node of WPT. The total 10 data sets at five different speeds corresponding to each bearing condition are recorded for fault classification. Thus, extracted features are used to train and test neural network with multi layer perceptron to classify the rolling element bearing condition as HB, ORD, IRD, BD and CD. The proposed artificial neural network with multi layer perceptron classifier has overall fault classification rate of 97 %.
机译:本文提出了一种自动诊断各种轴承部件上具有局部缺陷(飞溅)的球轴承的方法。该系统使用小波包分解,并使用rbio5.5实数小波母函数从振动信号中提取特征,并记录各种轴承故障情况。分解程度取决于采样频率和特征缺陷频率。将最大能量与最小Shannon熵比标准用于选择小波包树的最佳节点。从WPT选定节点的小波包系数中提取峰度和能量这两个特征。记录对应于每种轴承状况的五个不同速度下的总共10个数据集,以进行故障分类。因此,提取的特征用于训练和测试带有多层感知器的神经网络,以将滚动元件的轴承状况分类为HB,ORD,IRD,BD和CD。提出的带有多层感知器分类器的人工神经网络的总故障分类率为97%。

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