基于改进元迁移学习的变工况轴承小故障诊断

Xindi Wang, Bin Jiang, Lingfei Xiao, Leiming Ma
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引用次数: 0

摘要

在难以获取轴承缺陷真实信号的情况下,迁移学习方法比传统深度学习方法具有更好的诊断效果。为了利用迁移学习克服变条件轴承故障诊断的“少弹”挑战,提出了基于增强元迁移学习的“少弹”故障诊断方法。首先,基于元学习器对网络参数进行优化。其次,构建基于元学习的迁移网络模型,并结合领域自适应方法,得到具有较强泛化能力的元学习器。同时,将通道关注模块应用于特征层,增强模型的特征表达能力。该方法利用了小样本数据的有限故障特征,避免了过拟合,提高了泛化能力。通过低速动平衡试验台的故障数据验证了该方法的有效性。结果表明,基于元迁移学习的轴承故障诊断方法可以准确地对不同工况下的轴承故障进行分类。与其他方法相比,该方法具有更好的精度和泛化能力。
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Enhanced Meta-Transfer Learning for Few-Shot Fault Diagnosis of Bearings with Variable Conditions
The transfer learning method performs better than conventional deep learning when dealing with the few-shot diagnosis situation where obtaining the true bearing defect signal is challenging. In order to leverage transfer learning to overcome the few-shot challenge of variable-condition bearing failure diagnosis, we propose the few-shot fault diagnosis approach based on enhanced meta-transfer learning. First, the network parameters are optimized based on a meta-learner. Second, a meta-learning-based transfer network model is constructed, combined with domain-adaptive methods to obtain a meta-learner with strong generalization ability. Meanwhile, the channel attention module is applied to the feature layer to strengthen the model’s feature expression ability. The proposed method Take advantage of the limited fault feature on small-sample data, while avoiding overfitting and improving the generalization ability. The performance of the proposed approach is verified on the fault data from the low-speed dynamic balance test bench. The consequences indicate that the diagnosis approach based on meta-transfer learning can accurately classify the bearing failures under variable conditions. Contrasted to other approaches, the proposed approaches possess better accuracy and generalization capability.
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