基于C-DCGAN的滚动轴承故障诊断

Yu Zhang, Bo Jing, Shenglong Wang, Jinxin Pan, Shaoguang Du, Kai Yang, Qingyi Zhang, Jie Bao, Songling Huang, Xiaojuan Zhang
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引用次数: 0

摘要

在实际工程中,滚动轴承故障样本较小且不平衡,当轴承数据不平衡时,训练的诊断模型的分类往往倾向于多数类,这极大地影响了少数类的诊断准确性。针对上述问题,本文提出了一种基于条件深度卷积的生成对抗网络的故障诊断方法。首先利用克角场将轴承振动信号转换为二维图像,然后结合深度卷积神经生成对抗网络和条件生成对抗网络的特点,学习故障数据的分布,生成更多标记故障数据,对故障数据集进行扩展,最后将扩展后的数据集输入到CNN-SVM诊断模型中。实验结果表明,与CGAN、CNN-SVM等故障诊断算法相比,该算法能更准确地对轴承故障进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Diagnosis Based on C-DCGAN for Rolling Bearing
In actual engineering, the rolling bearing fault samples are small and non-balanced, when the bearing data is unbalanced, the classification of the trained diagnostic model is often inclined to the majority class, which greatly affects the diagnostic accuracy of the minority class. Aiming at the above problems, this paper proposes a fault diagnosis method for generating adversarial network based on conditional deep convolution. Firstly, the bearing vibration signal is converted into a two-dimensional image by using the gram angular field, and then the distribution of the fault data is learned by combining the characteristics of the deep convolutional neural generation adversarial network and the conditional generation adversarial network, and more labeled fault data is generated for the expansion of the fault datasets, and finally the expanded datasets are input into the CNN-SVM diagnostic model. Experimental results show that compared with CGAN, CNN-SVM and other fault diagnosis algorithms, the proposed algorithm can classify bearing faults more accurately.
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