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An enhanced convolutional neural network for bearing fault diagnosis based on time-frequency image

机译:基于时频图像的轴承故障诊断增强卷积神经网络

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Deep learning theory has been widely used for diagnosing bearing faults. However, this method still has same drawbacks. For example, single time or frequency domain analysis methods cannot effectively extract features, the ReLU function is greatly affected by the learning rate, and it is difficult to achieve satisfactory results using the same regularization for different layers. To overcome the aforementioned deficiencies: (1) short-time Fourier transform theory to obtain an input image, (2) the scaled exponential linear unit (SELU) function is introduced to avoid excessive "dead" nodes during the training process, and (3) the use of hierarchical regularization to obtain better training results. Small sample datasets were used for the test experiment in two bearing fault simulators. The experiment results showed that the proposed method has a higher fault diagnosis accuracy than existing deep learning diagnosis methods. (C) 2020 Elsevier Ltd. All rights reserved.
机译:深度学习理论已广泛用于诊断轴承故障。 然而,这种方法仍然具有相同的缺点。 例如,单时间或频域分析方法无法有效地提取特征,Relu函数受到学习率的大大影响,并且难以使用不同层的相同正则化实现令人满意的结果。 为了克服上述缺陷:(1)短时傅里叶变换理论获得输入图像,(2)缩放指数线性单元(SELU)功能被引入避免在训练过程中过度“死亡”节点,(3 )使用分层正规化以获得更好的培训结果。 小样本数据集用于两个轴承故障模拟器中的测试实验。 实验结果表明,该方法具有比现有的深度学习诊断方法更高的故障诊断精度。 (c)2020 elestvier有限公司保留所有权利。

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