王超, 田波, 李子睿, 等. 基于自注意力子域自适应对抗网络的轴承变工况故障诊断方法[J]. 中国舰船研究, 2023, 18(5): 260–268. doi: 10.19693/j.issn.1673-3185.03092
引用本文: 王超, 田波, 李子睿, 等. 基于自注意力子域自适应对抗网络的轴承变工况故障诊断方法[J]. 中国舰船研究, 2023, 18(5): 260–268. doi: 10.19693/j.issn.1673-3185.03092
WANG C, TIAN B, LI Z R, et al. Self-attention and subdomain adaptive adversarial network for bearing fault diagnosis under varying operation conditions[J]. Chinese Journal of Ship Research, 2023, 18(5): 260–268. doi: 10.19693/j.issn.1673-3185.03092
Citation: WANG C, TIAN B, LI Z R, et al. Self-attention and subdomain adaptive adversarial network for bearing fault diagnosis under varying operation conditions[J]. Chinese Journal of Ship Research, 2023, 18(5): 260–268. doi: 10.19693/j.issn.1673-3185.03092

基于自注意力子域自适应对抗网络的轴承变工况故障诊断方法

Self-attention and subdomain adaptive adversarial network for bearing fault diagnosis under varying operation conditions

  • 摘要:
      目的  领域自适应技术被广泛应用于轴承的变工况故障诊断问题,但大多只关注全局域分布而忽略同类别下的子域分布,且域不变特征的质量易受到强噪声影响,导致变工况下的诊断精度大幅下降。为此,提出一种基于自注意力子域自适应对抗网络的故障诊断方法。
      方法  首先,利用融合卷积注意力模块提取源域与目标域振动信号中与故障相关的域不变特征,并结合对抗网络和子域自适应模块减小不同工况数据在全局域和局部域边缘分布差异,提高数据的可迁移性。然后,采用Adam优化器对网络进行反向传播优化和超参数调优,减少损失误差,提升模型的诊断性能。最后,由故障模式分类器输出目标域测试集上的诊断结果,并采用渥太华轴承数据集验证方法的有效性。
      结果  结果表明,所提方法在强噪声变工况下的故障诊断精度超过96%,明显优于其他方法。
      结论  研究成果可为滚动轴承变工况下的故障诊断提供参考。

     

    Abstract:
      Objectives  Domain adaptive technology is widely used in the bearing fault diagnosis of variable operating conditions. However, most domain adaptive technology only focuses on the global domain distribution and ignores the subdomain distribution, and the domain-invariant feature quality is easily affected by noise, leading to a significant decrease in diagnostic accuracy under varying operation conditions. Therefore, a fault diagnosis method based on a self-attention subdomain adaptive adversarial network (SASAAN) is proposed.
      Methods  First, a convolutional block attention module (CBAM) is utilized to extract the fault-related domain-invariant features in the vibration signals of the source and target domains. The adversarial network and subdomain adaptive module are then combined to reduce differences in the global and local domain edge distributions of different operating condition data, thereby improving the transferability of the data. The loss function is optimized by back propagation using the Adam optimizer to improve the diagnostic performance of the model, and the hyperparameter tuning of the model is also performed. Finally, the diagnostic results on the target domain test set are output by the failure classifier, and the Ottawa bearing data set is used to validate the effectiveness of the proposed method. ,
      Results  The results show that the fault diagnosis accuracy of the proposed method is higher than 96% under the condition of strong noise and varying operation conditions, which is obviously better than other methods.
      Conclusion  The results of this study can provide valuable references for the fault diagnosis of rolling bearings under varying operation conditions.

     

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