A Fast bearing Fault diagnosis method based on lightweight Neural Network RepVGG

Yijun Huang, Renwen Chen, Yidi Chen, Shanshan Ding, Jiaqing Yao
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引用次数: 1

Abstract

In view of the shortcomings of existing deep learning methods in rolling bearing fault diagnosis, such as large number of training parameters and complex network, a fast rolling bearing fault diagnosis method based on lightweight neural network RepVGG was proposed. Firstly, the vibration signal is converted into three-channel time-frequency image by the combination of short-time Fourier transform (STFT) and pseudo-color processing technology, then the time-frequency image is inputted into the RepVGG network model for training. and the experiment is carried out on the case Western Reserve University (CWRU) data set. The accuracy is 99.62% and the training time is obviously lower than other popular fault diagnosis algorithm models based on deep learning. Finally, using the open source framework ncnn to deploy the RepVGG network model to the edge computing node Raspberry Pi, the average test accuracy is 95%, and the running efficiency is good.
基于轻量级神经网络RepVGG的轴承故障快速诊断方法
针对现有深度学习方法在滚动轴承故障诊断中训练参数多、网络复杂等缺点,提出了一种基于轻量级神经网络RepVGG的滚动轴承故障快速诊断方法。首先,结合短时傅里叶变换(STFT)和伪彩色处理技术将振动信号转换成三通道时频图像,然后将时频图像输入到RepVGG网络模型中进行训练。并在西储大学(CWRU)的案例数据集上进行了实验。准确率达到99.62%,训练时间明显低于其他基于深度学习的常用故障诊断算法模型。最后,利用开源框架ncnn将RepVGG网络模型部署到边缘计算节点树莓派上,平均测试准确率达到95%,运行效率良好。
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