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An Intelligent Fault Diagnosis Method for Bearings with Variable Rotating Speed Based on Pythagorean Spatial Pyramid Pooling CNN

机译:基于毕达哥拉斯空间金字塔池CNN的旋转轴承智能故障诊断方法

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摘要

Deep learning methods have been introduced for fault diagnosis of rotating machinery. Most methods have good performance when processing bearing data at a certain rotating speed. However, most rotating machinery in industrial practice has variable working speed. When processing the bearing data with variable rotating speed, the existing methods have low accuracies, or need complex parameter adjustments. To solve this problem, a fault diagnosis method based on continuous wavelet transform scalogram (CWTS) and Pythagorean spatial pyramid pooling convolutional neural network (PSPP-CNN) is proposed in this paper. In this method, continuous wavelet transform is used to decompose vibration signals into CWTSs with different scale ranges according to the rotating speed. By adding a PSPP layer, CNN can process CWTSs in different sizes. Then the fault diagnosis of variable rotating speed bearing can be carried out by a single CNN model without complex parameter adjustment. Compared with a spatial pyramid pooling (SPP) layer that has been used in CNN, a PSPP layer locates as front layer of CNN. Thus, the features obtained by PSPP layer can be delivered to convolutional layers for further feature extraction. According to experiment results, this method has higher diagnosis accuracy for variable rotating speed bearing than other methods. In addition, the PSPP-CNN model trained by data at some rotating speeds can be used to diagnose bearing fault at full working speed.
机译:深度学习方法已被引入到旋转机械故障诊断中。当以一定转速处理轴承数据时,大多数方法都具有良好的性能。然而,工业实践中的大多数旋转机械具有可变的工作速度。在以可变转速处理轴承数据时,现有方法精度较低,或者需要复杂的参数调整。针对这一问题,提出了一种基于连续小波变换尺度图(CWTS)和毕达哥拉斯空间金字塔池卷积神经网络(PSPP-CNN)的故障诊断方法。该方法利用连续小波变换将振动信号根据转速分解为不同尺度范围的CWTS。通过添加PSPP层,CNN可以处理不同大小的CWTS。然后,可以通过单个CNN模型进行变速轴承的故障诊断,而无需进行复杂的参数调整。与CNN中已使用的空间金字塔池(SPP)层相比,PSPP层位于CNN的顶层。因此,由PSPP层获得的特征可以传递到卷积层以进行进一步的特征提取。根据实验结果,该方法对变速轴承的诊断精度高于其他方法。此外,在某些转速下通过数据训练的PSPP-CNN模型可用于诊断全速下的轴承故障。

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