School of Vehicles and Energy, Yanshan University, Qinhuangdao, Hebei 066004, PR China.
School of Vehicles and Energy, Yanshan University, Qinhuangdao, Hebei 066004, PR China.
Neural Netw. 2024 May;173:106167. doi: 10.1016/j.neunet.2024.106167. Epub 2024 Feb 8.
Recently, due to the difficulty of collecting condition data covering all mechanical fault types in industrial scenarios, the fault diagnosis problem under incomplete data is receiving increasing attention where no target prior information can be available. The existing open-set or universal domain adaptation (DA) diagnosis methods typically treat private fault samples in the target as a generalized "unknown" fault class, neglecting their inherent structure. This oversight can lead to confusion in latent feature space representations and difficulties in separating unknown samples. Therefore, a universal DA method with unsupervised clustering is developed to explore the intrinsic structure of the target samples for mechanical fault diagnosis, where multi-source information on different working conditions is considered to transfer complementary knowledge. First, a composite clustering metric combining single-domain and cross-domain evaluation is constructed to recognize shared and unknown health classes on source-target domains. Second, to alleviate the intra-class shift while enlarging the inter-class gap, a class-wise DA algorithm is suggested which operates on the basis of maximum mean discrepancy. Finally, an entropy regularization criterion is utilized to facilitate clustering of different health classes. The efficacy of the presented approach in the fault diagnosis issues when monitoring data is inadequate has been verified through extensive experiments on three rotating machinery datasets.
最近,由于难以收集涵盖工业场景中所有机械故障类型的条件数据,不完全数据下的故障诊断问题越来越受到关注,此时无法获得目标先验信息。现有的开集或通用领域自适应(DA)诊断方法通常将目标中的私有故障样本视为广义的“未知”故障类别,忽略了它们的固有结构。这种疏忽可能导致潜在特征空间表示的混淆,并难以分离未知样本。因此,开发了一种具有无监督聚类的通用 DA 方法,以探索机械故障诊断中目标样本的内在结构,其中考虑了不同工况的多源信息以传递补充知识。首先,构建了一种组合了单域和跨域评估的综合聚类度量标准,以识别源-目标域上的共享和未知健康类别。其次,为了在扩大类间差距的同时减轻类内偏移,建议使用基于最大均值差异的类内 DA 算法。最后,利用熵正则化准则促进不同健康类别的聚类。通过在三个旋转机械数据集上进行的广泛实验,验证了所提出的方法在监测数据不足时进行故障诊断的有效性。