New operating conditions can result in a performance drop of fault diagnostics models due to the domain gap between the training and the testing data distributions. While several domain adaptation approaches have been proposed to overcome such domain shifts, their application is limited if the label spaces of the two domains are not congruent. To improve the transferability of the trained models, particularly in setups where only the healthy data class is shared between the two domains, we propose a new framework based on a Wasserstein GAN for Partial and OpenSet&Partial domain adaptation. The main contribution is the controlled fault data generation that enables to generate unobserved fault types and severity levels in the target domain by having only access to the healthy samples in the target domain and faulty samples in the source domain. To evaluate the ability of the proposed method to bridge domain gaps in different domain adaption settings, we conduct Partial as well as OpenSet&Partial domain adaptation experiments on two bearing fault diagnostics case studies. The results show the versatility of the framework and that the synthetically generated fault data helps bridging the domain gaps, especially in instances where the domain gap is large.
翻译:由于培训和测试数据分布之间的领域差距,新的操作条件可能导致故障诊断模型的性能下降。虽然提出了若干领域适应方法,以克服这些领域的变化,但如果两个领域的标签空间不一致,其应用是有限的。为了改进所培训模型的可转让性,特别是在只有健康数据类别在两个领域之间共享的设置中,我们提议了一个基于瓦塞尔斯坦GAN的新框架,用于部分和开放Set & Partial域的适应。主要贡献是控制性故障数据生成,能够产生目标领域未观察到的过失类型和严重程度,即只能获取目标领域健康样本和源领域有缺陷样本。为了评估拟议方法在缩小不同领域适应环境中的域差距的能力,我们进行了部分和开放Set & Partial域适应实验,以两个有错误诊断案例研究为主。结果显示框架的多功能性,以及合成产生的故障数据有助于缩小域间差距,特别是在领域差距大的情况下。