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Comparison between Artificial Neural Network and Support Vector Method for a Fault Diagnostics in Rolling Element Bearings

机译:滚动元件轴承故障诊断的人工神经网络与支持向量方法的比较

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Rolling element bearings are the most crucial part of any rotating machines. The failures of bearing without warning will result catastrophic consequences in many situations. Therefore condition monitoring of bearing is very important. In this paper, artificial intelligence techniques are used to predict and analyses the bearing faults. Experiments were carried out on rolling bearing having localized defects on the various bearing components for wide range of speed and vibration signals were stored. Condition monitoring systems is divided in two important part one feature extraction and second diagnosis through extracted features. Daubechies wavelet is popular for smoothing of signals so, it is chosen for reducing the background noise from vibration signal. Kurtosis, RMS, Creast factor and Peak difference as suitable time domains features are extracted from decompose time velocity signals. Back propagation multilayer neural network was train and tested by 369 pre-treated normliesed features. Support vector machine is also used for the same data for predicting bearing faults. Finally, it is found that Support vector machine techniques gives better results over ANN.
机译:滚动元件轴承是任何旋转机器最重要的部分。没有警告的轴承故障将导致许多情况下的灾难性后果。因此,条件监测轴承非常重要。本文使用人工智能技术来预测和分析轴承故障。在滚动轴承上进行实验,其在各种轴承部件上具有宽范围的速度和振动信号的局部缺陷。条件监测系统分为两个重要的第一个特征提取和第二次诊断通过提取的特征。 Daubechies小波对于信号平滑的光波是流行的,所以选择用于减少振动信号的背景噪声。作为合适的时间域特征,从分解时间速度信号提取Kurtosis,RMS,折叠因子和峰值差异。回到传播多层神经网络是由369预处理的常压特征进行火车和测试。支持向量机也用于相同的数据,用于预测轴承故障。最后,发现支持向量机技术提供更好的ANN结果。

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