局部和开放域自适应的不可见故障控制生成

Katharina Rombach, Gabriel Michau, Olga Fink
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引用次数: 14

摘要

由于训练数据分布和测试数据分布之间的域转移,新的运行条件会导致故障诊断模型的性能显著下降。虽然已经提出了几种领域自适应方法来克服这种领域转移,但如果两个领域中表示的故障类别不相同,则它们的应用受到限制。为了在两个不同的领域之间实现更好的训练模型可移植性,特别是在两个领域之间仅共享健康数据类的设置中,我们提出了一个基于使用Wasserstein GAN生成不同故障签名的部分和开放部分领域自适应的新框架。该框架的主要贡献是控制合成断层数据的生成,该数据具有两个明显的特点。首先,该方法通过只访问目标域中的健康样本和源域中的故障样本,可以在目标域中生成未观察到的故障类型。其次,可以控制故障的生成,精确地生成不同的故障类型和故障严重级别。所提出的方法特别适合于极端的域适应设置,这些设置在复杂和安全关键系统的上下文中特别相关,其中两个域之间只有一个类共享。在两个轴承故障诊断案例研究中,我们对所提出的框架在部分和开放部分域自适应任务上进行了评估。我们在不同标签空间设置下进行的实验展示了所提出框架的多功能性。在较大的域间隙下,与其他方法相比,所提出的方法提供了更好的结果。
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Controlled Generation of Unseen Faults for Partial and OpenSet&Partial Domain Adaptation
New operating conditions can result in a significant performance drop of fault diagnostics models due to the domain shift 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 fault classes represented in the two domains are not the same. To enable a better transferability of the trained models between two different domains, particularly in setups where only the healthy data class is shared between the two domains, we propose a new framework for Partial and Open-Partial domain adaptation based on generating distinct fault signatures with a Wasserstein GAN. The main contribution of the proposed framework is the controlled synthetic fault data generation with two main distinct characteristics. Firstly, the proposed methodology enables to generate unobserved fault types in the target domain by having only access to the healthy samples in the target domain and faulty samples in the source domain. Secondly, the fault generation can be controlled to precisely generate distinct fault types and fault severity levels. The proposed method is especially suited in extreme domain adaption settings that are particularly relevant in the context of complex and safety-critical systems, where only one class is shared between the two domains. We evaluate the proposed framework on Partial as well as Open-Partial domain adaptation tasks on two bearing fault diagnostics case studies. Our experiments conducted in different label space settings showcase the versatility of the proposed framework. The proposed methodology provided superior results compared to other methods given large domain gaps.
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