用于工业故障诊断的基于双重注意力的多源多级对齐域自适应技术

Qi Wang, Qitong Chen, Liang Chen, Changqing Shen
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摘要

跨域故障诊断对于具有各种未知运行条件的工业应用至关重要。然而,由于多个源域的特征分布存在显著差异,可能会导致不同域之间的特征相互干扰,降低诊断的准确性,这是目前大多数研究未考虑的问题。此外,现有方法大多只关注低频全局信息的提取,无法充分处理高频局部信息。因此,本文提供了一种多级处理集成的基于双重注意力的多源多级对齐域适应(DAMMADA)方法。不同子域共享的全局故障特征由来自不同域的三个特定域特征提取器提取。在局部特征提取器中,双权重关注模块不仅利用共享权重来聚合局部信息,还利用上下文权重来改进局部特征。在损失处理方面,在改进高频和低频信息提取后,使用多个伪标签来减少局部最大均值差异(LMMD)的损失,以学习域不变特征。为了修改分类边界,合并了伪标签的均方误差(MSE)。在 SCARA 机器人和轴承故障诊断的两个平台上分别进行了综合实验,结果表明 DAMMADA 在准确性和抑制跨域任务负迁移的能力方面优于其他方法。
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Dual-weight Attention-based Multi-source Multi-stage Alignment Domain Adaptation for Industrial Fault Diagnosis
Cross-domain fault diagnosis is crucial for industrial applications with various and unknown operating conditions. However, due to the significant differences in the distribution of features in multiple source domains, it may lead to mutual interference of features between different domains and reduce the accuracy of diagnosis, which is a problem not considered by most current researches. In addition, most of the existing methods focus only on the extraction of low-frequency global information and cannot adequately deal with high-frequency local information. Consequently, this paper provides a multi-stage processing integrated dual-weight attention-based multi-source multi-stage aligned domain adaptation (DAMMADA) method. Global fault features that are shared by various subdomains are extracted by three domain-specific feature extractors from various domains. In a local feature extractor, the dual-weight attention module not only uses shared weights to aggregate local information, but it also uses contextual weights to improve local features. In terms of loss handling, multiple pseudo-labels are used to reduce the loss of the local maximum mean discrepancy (LMMD) in order to learn the domain-invariant characteristics after improving the high-frequency and low-frequency information extraction. To modify the classification boundaries, the pseudo-labels' mean square errors (MSE) are combined. Comprehensive experiments were carried out on two platforms for fault diagnosis of SCARA robots and bearings respectively, and the results demonstrated that DAMMADA is superior to other methods in terms of accuracy and its ability to suppress negative migration for cross-domain tasks.
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