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Intelligent Identification of Bearing Faults Using Time Domain Features

机译:利用时域特征智能识别轴承故障

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An approach is proposed for fault diagnosis of rolling element bearings using time domain features as inputs to the artificial neural network (ANN). The time domain features are extracted from the segments of the experimental dataset for known machine conditions. The dataset has been subjected to somewhat preprocessing previous to feature extraction. The ANN consists of five input nodes, one hidden layer with five nodes and four output nodes. Each of five input nodes represents root mean square, variance, skewness, kurtosis and normalized sixth central moment of the time domain vibration signals, respectively. Four binary nodes in the output layer specify the bearing condition: normal, outer race defect, inner race defect or ball defect. The ANN is trained using back propagation algorithm with a subset of the time domain features. The ANN is tested using the remaining set of the time domain features. Training and test success are used to evaluate efficiency of the presented method. The results indicate the effectiveness of the time domain features in diagnosis of bearing failures with high accuracy and low computation.
机译:提出了一种使用时域特征作为人工神经网络(ANN)输入的滚动轴承故障诊断方法。从实验数据集的各个部分中提取已知机器条件的时域特征。在特征提取之前,已对数据集进行了某种预处理。 ANN由五个输入节点组成,一个包含五个节点的隐藏层和四个输出节点。五个输入节点中的每一个分别代表时域振动信号的均方根,方差,偏度,峰度和归一化的第六中心矩。输出层中的四个二进制节点指定轴承状态:法向,外圈缺陷,内圈缺陷或滚珠缺陷。使用带有时域特征子集的反向传播算法训练ANN。使用其余的时域功能集对ANN进行测试。培训和测试成功用于评估所提出方法的效率。结果表明时域特征在高精度和低计算量的轴承故障诊断中的有效性。

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