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A Novel Intelligent Diagnosis Method for Bearing Based on Fused-feature Images

机译:一种基于融合特征图像的轴承智能诊断方法

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Bearings are commonly used rotary components in many power transmission occasions. Reliability of bearing plays an important role in whole equipment operation. Automatic and reliable fault diagnosis of this rotary component can enhance its reliability and minimize the cost of equipment maintenance. Aiming at this common goal, a novel bearing fault diagnosis method is proposed, which is inspired by signal processing and image classification techniques. First of all, vibration signals in time domain are processed into frequency spectrum and squared envelope spectrum to refine more features. Subsequently, three kinds of features are adjusted to two-dimensional data which are fused and transformed into red-green-blue (RGB) color image form later. This action can utilize artificial techniques to fuse more information and enlarge differences among different types of faults. Finally, a deep convolutional neural network (CNN) method is adopted to extract features of the composite images and achieve fault diagnosis. Experimental results show that the proposed method can achieve a high fault diagnosis accuracy more than 99% for bearing.
机译:轴承是常用的旋转部件中的许多电力传输场合。轴承可靠性在整个设备运行中起着重要作用。这种旋转部件的自动可靠的故障诊断可以提高其可靠性并最大限度地减少设备维护的成本。针对这种共同目标,提出了一种新的轴承故障诊断方法,其是通过信号处理和图像分类技术的启发。首先,将时域中的振动信号处理为频谱和平方包络谱,以改进更多特征。随后,将三种特征调整为稍后被融合的二维数据,并转换为红色绿色(RGB)彩色图像形式。该动作可以利用人工技术来熔化更多信息并放大不同类型的故障之间的差异。最后,采用深度卷积神经网络(CNN)方法提取复合图像的特征并实现故障诊断。实验结果表明,该方法可以达到高度诊断精度超过99%的轴承。

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