Early fault detection (EFD) of rolling bearings can recognize slight deviation of the health states and contribute to the stability of mechanical systems. In practice, very limited target bearing data are available to conduct EFD, which makes it hard to adapt to the EFD task of new bearings. To address this problem, many transfer learning based EFD methods utilize historical data to learn transferable domain knowledge and conduct early fault detection on new target bearings. However, most existing methods only consider the distribution drift across different working conditions but ignore the difference between bearings under the same working condition, which is called Unit-to-Unit Variability (UtUV). The setting of EFD with limited target data considering UtUV can be formulated as a Few-shot Anomaly Detection task. Therefore, this paper proposes a novel EFD method based on meta-learning considering UtUV. The proposed method can learn a generic metric based on Relation Network (RN) to measure the similarity between normal data and the new arrival target bearing data. Besides, the proposed method utilizes a health state embedding strategy to decrease false alarms. The performance of proposed method is tested on two bearing datasets. The results show that the proposed method can detect incipient faults earlier than the baselines with lower false alarms.
翻译:滚动轴承的早期误差检测(EFD)可以承认健康状况的轻微偏差,有助于机械系统的稳定。在实践中,为进行EFD提供的目标标定数据非常有限,因此很难适应EFD的新轴承任务。为解决这一问题,许多基于学习的基于EFD的方法都利用历史数据来学习可转移的域知识,对新目标轴承进行早期误差检测。然而,大多数现有方法只考虑不同工作条件下的分布漂移,而忽视在同一工作条件下,即所谓的单位对单位挥发性(UtUV)的轴承承承承承错之间的差异。考虑到UtUV的设定目标数据有限,因此,很难适应EFD的设定目标数据,因此,本文提出了基于元学习的新EFD方法,其中考虑到UTUV。提议的方法可以学习基于Relation网络(RN)的通用指标,以测量正常数据与带有数据的新抵达目标之间的相似性。此外,拟议方法利用健康状态嵌入战略来减少误警报。拟议方法的性表现方式可以测试先验的基线。