Generative Adversarial Network Based Multi-class Imbalanced Fault Diagnosis of Rolling Bearing

Qianjun Liu, Guijun Ma, Cheng Cheng
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引用次数: 3

Abstract

Fault diagnosis of rolling bearing plays an important role for the assessment of system reliability. Meanwhile, the number of fault data tend to be much less than the normal data in the real application. This imbalanced problem will greatly reduce the accuracy of most traditional fault diagnosis methods. Especially for the multi-classification problem, some conventional methods can not have good performance on dealing with unbalanced data. In this paper, a method based on generative adversarial network network which generates data for data unbalanced compensation is proposed. This method use designed generator to generate the virtual data which has significant useful features to puzzle the discriminator. Moreover, the virtual data that out-trick the discriminator can be added into the minor dataset. Finally, the classifier based on Convolutional Neurtal Network will dispose the new dataset. In order to verify the effect of this method, experiments based on major methods and proposed method are executed on the CWRU bearing dataset under different loads, which will reduce the correlation of data over time continuity in order to achieve a more realistic fit. Moreover, the proposed method has been compared with several widely applied methods for imbalanced data in fault diagnosis in terms of accuracy. Finally, the comparative results demonstrate that the proposed method has better performance on dealing with the imbalanced problem in fault diagnosis of the rolling bearing than major methods.
基于生成对抗网络的多类滚动轴承不平衡故障诊断
滚动轴承的故障诊断对系统可靠性评估具有重要意义。同时,在实际应用中,故障数据的数量往往远远少于正常数据。这种不平衡问题将大大降低大多数传统故障诊断方法的准确性。特别是对于多分类问题,一些传统的方法在处理不平衡数据时表现不佳。提出了一种基于生成式对抗网络的数据生成方法,用于数据不平衡补偿。该方法利用设计好的生成器生成具有显著有用特征的虚拟数据来迷惑鉴别器。此外,可以将欺骗鉴别器的虚拟数据添加到小数据集中。最后,基于卷积神经网络的分类器对新数据集进行处理。为了验证该方法的效果,在不同载荷下的CWRU轴承数据集上进行了基于主要方法和本文提出的方法的实验,减少了数据随时间连续性的相关性,以达到更真实的拟合。并将该方法与目前广泛应用的几种不平衡数据故障诊断方法进行了精度比较。最后,对比结果表明,所提出的方法在处理滚动轴承故障诊断中的不平衡问题方面比现有的方法具有更好的性能。
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