基于多域自适应的变工况机械故障诊断

Qi Li, Shuangjie Liu, Bingru Yang, Yiyun Xu, Liang Chen, Changqing Shen
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引用次数: 1

摘要

由于工业智能诊断的复杂性,基于迁移学习的故障诊断已成为一个不断发展的研究热点。迁移学习利用源域的知识来识别目标域中的故障,是解决故障信号域转移问题的有力工具。然而,现有的方法存在多目标域的局限性。换句话说,对于不同的域,需要各自的迁移任务。为此,提出了一种对抗性多域自适应(AMDA)故障诊断方法,利用单一源域的知识实现对多个目标域的故障诊断。AMDA分为三个部分,即特征提取器、故障分类器和域分类器。特征提取器和领域分类器通过多领域对抗学习,挖掘多个领域共享的知识,故障分类器可以识别分布在不同领域的故障特征。该方法优于传统的迁移学习故障诊断方法。此外,特征可视化结果表明,AMDA在多领域具有显著的优势和广阔的研究前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adversarial multi-domain adaptation for machine fault diagnosis with variable working conditions
Due to the complexity of industrial intelligent diagnosis, transfer learning-based fault diagnosis has become an evolving focus of the research field. Transfer learning uses knowledge of the source domain to identify faults in the target domain, which is a powerful tool to solve the problem of fault signal domain shift. However, existing methods have a limitation on multiple target domains. In other words, for different domains, respective transfer tasks are necessary. To seek a breakthrough, a adversarial multi-domain adaptation (AMDA) fault diagnosis method is proposed, realizing the fault diagnosis of multiple target domains by using the knowledge of a single source domain. AMDA is divided into three parts, namely, feature extractor, fault classifier and domain classifier. Through multi-domain adversarial learning, feature extractor and domain classifier mine the knowledge shared by multiple domains, and fault classifier can identify fault features distributed in different domains. The proposed AMDA method can surpass some traditional transfer learning fault diagnosis methods. Furthermore, as feature visualization result revealed, AMDA has significant advantages in multi-domain and broad research prospects.
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