Continuous long-term monitoring of motor health is crucial for the early detection of abnormalities such as bearing faults (up to 51% of motor failures are attributed to bearing faults). Despite numerous methodologies proposed for bearing fault detection, most of them require normal (healthy) and abnormal (faulty) data for training. Even with the recent deep learning (DL) methodologies trained on the labeled data from the same machine, the classification accuracy significantly deteriorates when one or few conditions are altered. Furthermore, their performance suffers significantly or may entirely fail when they are tested on another machine with entirely different healthy and faulty signal patterns. To address this need, in this pilot study, we propose a zero-shot bearing fault detection method that can detect any fault on a new (target) machine regardless of the working conditions, sensor parameters, or fault characteristics. To accomplish this objective, a 1D Operational Generative Adversarial Network (Op-GAN) first characterizes the transition between normal and fault vibration signals of (a) source machine(s) under various conditions, sensor parameters, and fault types. Then for a target machine, the potential faulty signals can be generated, and over its actual healthy and synthesized faulty signals, a compact, and lightweight 1D Self-ONN fault detector can then be trained to detect the real faulty condition in real time whenever it occurs. To validate the proposed approach, a new benchmark dataset is created using two different motors working under different conditions and sensor locations. Experimental results demonstrate that this novel approach can accurately detect any bearing fault achieving an average recall rate of around 89% and 95% on two target machines regardless of its type, severity, and location.
翻译:对发动机健康进行持续的长期监测对于早期发现异常现象至关重要,例如,对发动机健康进行早期检测(高达51%的发动机故障归错)至关重要。尽管提出了许多方法来检测故障,但大多数方法都需要正常(健康)和异常(失错)数据来进行培训。即使最近根据同一机器的标签数据培训了深入的(DL)方法,但当一种或几种条件发生变化时,分类准确度也会大幅下降。此外,如果在另一机器上测试有完全不同的健康和错误信号模式,它们的性能就会严重受损或完全失灵。为了应对这一需要,在本次试点研究中,我们建议采用一个零发错的发现故障检测方法,在新的(目标)机器(目标)上,无论工作条件、传感器参数或缺陷特征如何,都能发现任何故障。要实现这一目标,一个1D操作Genearation Aversarial网络(Op-GAN)首先描述正常和故障的信号在各种条件下的正常和故障信号,然后在两个目标机器上,一个潜在的错误信号可以显示一个真正的错误,而一个经过训练的自我测算结果,然后,一个是真实的频率,一个在两个方向上,一个是一次测算。