Weihan Li, Dunke Liu, Yang Li, Ming Hou, Jie Liu, Zhen Zhao, Aibin Guo, Huimin Zhao, Wu Deng
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引用次数: 0
摘要
针对不平衡分布下故障诊断模型泛化能力差、诊断效率低的问题,本文提出了一种利用变异自编码器生成对抗网络和改进卷积神经网络的新型故障诊断方法,命名为 VGAIC-FDM。首先,为了捕捉振动信号的局部特征,采用连续小波变换将原始的一维故障信号转换成小波时频图像。其次,为了降低数据维度和简化模型,对时频小波图像进行灰度处理,生成单通道灰度时频图像。然后,使用变异自动编码器生成对抗网络,对灰度时频图像进行样本增强,以平衡数据集。最后,利用聚焦损耗优化 CNN 分类器对生成的图像和原始图像进行融合和训练,以实现不平衡条件下的故障诊断。实验结果表明,VGAIC-FDM 能有效捕捉真实样本的潜在空间分布,减轻样本分类难度不一致带来的影响。因此,它提高了模型在处理不平衡数据集时的故障诊断性能,从而获得更高的准确率和 F1 分数。
Fault diagnosis using variational autoencoder GAN and focal loss CNN under unbalanced data
For the poor model generalization and low diagnostic efficiency of fault diagnosis under imbalanced distributions, a novel fault diagnosis method using variational autoencoder generation adversarial network and improved convolutional neural network, named VGAIC-FDM, is proposed in this paper. First, to capture local features of vibration signals, continuous wavelet transform is employed to convert the original one-dimensional fault signals into wavelet time–frequency images. Second, for the data dimensionality reduction and model simplification, the time–frequency wavelet images are processed in grayscale to generate single-channel grayscale time–frequency images. Then, sample augmentation is performed on grayscale time–frequency images to balance the dataset by using a variational autoencoder generation adversarial network. Finally, the generated images and the original images are fused and trained by using a focus-loss-optimized CNN classifier to achieve fault diagnosis under unbalanced conditions. The experimental results show that the VGAIC-FDM effectively captures the potential spatial distribution of real samples and alleviates the impact caused by the inconsistent difficulty of sample classification. As a result, it enhances the fault diagnosis performance of the model when dealing with unbalanced datasets, leading to higher accuracy and F1-score values.