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Rolling-Element Bearing Fault Diagnosis Using Improved LeNet-5 Network

机译:使用改进的LeNet-5网络的滚动轴承故障诊断

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摘要

To address the problems of low recognition accuracy, slow convergence speed and weak generalization ability of traditional LeNet-5 network used in rolling-element bearing fault diagnosis, a rolling-element bearing fault diagnosis method using improved 2D LeNet-5 network is put forward. The following improvements to the traditional LeNet-5 network are made: the convolution and pooling layers are reasonably designed and the size and number of convolution kernels are carefully adjusted to improve fault classification capability; the batch normalization (BN) is adopted after each convolution layer to improve convergence speed; the dropout operation is performed after each full-connection layer except the last layer to enhance generalization ability. To further improve the efficiency and effectiveness of fault diagnosis, on the basis of improved 2D LeNet-5 network, an end-to-end rolling-element bearing fault diagnosis method based on the improved 1D LeNet-5 network is proposed, which can directly perform 1D convolution and pooling operations on raw vibration signals without any preprocessing. The results show that the improved 2D LeNet-5 network and improved 1D LeNet-5 network achieve a significant performance improvement than traditional LeNet-5 network, the improved 1D LeNet-5 network provides a higher fault diagnosis accuracy with a less training time in most cases, and the improved 2D LeNet-5 network performs better than improved 1D LeNet-5 network under small training samples and strong noise environment.
机译:针对滚动轴承故障诊断中传统LeNet-5网络识别精度低,收敛速度慢,泛化能力弱的问题,提出了一种采用改进的二维LeNet-5网络的滚动轴承故障诊断方法。对传统的LeNet-5网络进行了以下改进:合理设计卷积和池化层,并仔细调整卷积内核的大小和数量以提高故障分类能力;在每个卷积层之后采用批归一化(BN),以提高收敛速度。在除最后一层之外的每个全连接层之后执行删除操作,以增强泛化能力。为了进一步提高故障诊断的效率和有效性,在改进的2D LeNet-5网络的基础上,提出了一种基于改进的1D LeNet-5网络的端到端滚动轴承故障诊断方法,该方法可以直接无需任何预处理即可对原始振动信号执行一维卷积和合并操作。结果表明,改进的2D LeNet-5网络和改进的1D LeNet-5网络与传统LeNet-5网络相比,具有显着的性能改进,改进的1D LeNet-5网络在大多数情况下提供了更高的故障诊断精度和更少的培训时间。在较小的训练样本和强噪声环境下,改进的2D LeNet-5网络的性能要优于改进的1D LeNet-5网络。

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