基于视觉对称点模式和cnn的轴承故障诊断

Hui Wang, Jiawen Xu, Ruqiang Yan
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引用次数: 4

摘要

提出了一种基于对称点图(SDP)和卷积神经网络(cnn)的轴承故障诊断新方法。首先,利用SDP技术将时域振动信号直接转换为极坐标雪花图像,实现故障可视化,并建立各运行状态的SDP可视化图样本库;然后,通过设计的cnn模型自动提取SDP图像的形状差异特征,形成特征向量。最后,将生成的特征向量作为Softmax分类器的输入,用于识别轴承故障状态。相对于时频分析方法的故障可视化,采用SDP技术直接获取轴承振动信号的雪花图像,无需进行傅里叶变换,更简单、性能更好。实验结果表明,该方法既能准确识别轴承状态,又能识别出故障发生的相对位置。该方法更适用于滚动轴承的智能故障诊断,诊断准确率为100%。
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Bearing Fault Diagnosis Based on Visual Symmetrized Dot Pattern and CNNs
This paper presents a new bearing fault diagnostic method based on symmetrized dot pattern (SDP) and convolutional neural networks (CNNs). Firstly, a time-domain vibration signal is directly transformed into a snowflake image in the polar coordinate to visualize fault by using SDP technique, and the sample library of visual SDP graphs of each running state is established. Then, shape difference features of SDP images are automatically extracted by the designed CNNs model to form a feature vector. Finally, the formed feature vector is used as the input to a Softmax classifier for recognizing the bearing fault state. Relative to the fault visualization of time-frequency analysis methods, the snowflake image of bearing vibration signal is directly acquireded by SDP technique without Fourier transforms, which is simpler with better performance. Experimental results show that the proposed method using SDP and CNNs can not only accurately recognize the bearing states, but also identify the relative position that fault occurred. The proposed method is more applicable for intelligent fault diagnosis of rolling bearing with 100% diagnosis accuracy.
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