A novel rolling bearing fault diagnosis method for limited data

Haibin Sun, Wenbo Zhang
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Abstract

The ability of deep learning based bearing fault diagnosis methods is developing rapidly. However, it is difficult to obtain sufficient and comprehensive fault data in industrial applications, and changes in vibration signals caused by machine operating conditions can also hinder the accuracy of the model. The problem of limited data and frequent changes in operating conditions can seriously affect the effectiveness of deep learning methods. To tackle these challenges, a novel transformer model named the Differential Window Transformer (Dwin Transformer), which employs a new differential window self-attention mechanism, is presented in this paper. Meanwhile, the model introduces a hierarchical structure and a new patch merging to further improve performance. Furthermore, a new fault diagnosis model dealing with limited training data is proposed, which combines the Auxiliary Classifier Generative Adversarial Network with the Dwin Transformer(DT-ACGAN). The DT-ACGAN model can generate high-quality fake samples to facilitate training with limited data, significantly improving diagnostic capabilities. The proposed model can achieve excellent results under the dual challenges of limited data and variable working conditions by combining Dwin Transformer with GAN. The DT-ACGAN owns superior diagnostic accuracy and generalization performance under limited sample data and varying working environments when compared with other existing models. A comparative test about cross-domain ability is conducted on the Case Western Reserve University dataset and Jiang Nan University dataset. The results show that the proposed method achieves an average accuracy of 11.3% and 3.76% higher than other existing methods with limited data respectively.
针对有限数据的新型滚动轴承故障诊断方法
基于深度学习的轴承故障诊断方法发展迅速。然而,在工业应用中很难获得足够和全面的故障数据,机器运行条件引起的振动信号变化也会阻碍模型的准确性。有限的数据和频繁变化的运行条件会严重影响深度学习方法的有效性。为了应对这些挑战,本文提出了一种名为差分窗口变压器(Dwin Transformer)的新型变压器模型,该模型采用了一种新的差分窗口自注意机制。同时,该模型引入了分层结构和新的补丁合并,以进一步提高性能。此外,本文还提出了一种处理有限训练数据的新型故障诊断模型,该模型将辅助分类生成对抗网络与 Dwin Transformer(DT-ACGAN)相结合。DT-ACGAN 模型可以生成高质量的假样本,便于在数据有限的情况下进行训练,从而显著提高诊断能力。通过将 Dwin Transformer 与 GAN 相结合,所提出的模型可以在有限数据和多变工作条件的双重挑战下取得优异的结果。与其他现有模型相比,DT-ACGAN 在有限的样本数据和多变的工作环境下具有更高的诊断准确性和泛化性能。在凯斯西储大学数据集和江南大学数据集上进行了跨领域能力对比测试。结果表明,在数据有限的情况下,所提出的方法比其他现有方法的平均准确率分别高出 11.3% 和 3.76%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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