论文标题
通过盲目域过渡进行零射击运动健康监测
Zero-Shot Motor Health Monitoring by Blind Domain Transition
论文作者
论文摘要
对运动健康的持续长期监测对于早期发现异常(例如轴承断层)至关重要(高达51%的运动故障归因于轴承断层)。尽管提出了许多用于轴承故障检测的方法,但其中大多数需要正常(健康)和异常(错误)数据才能进行训练。即使最近对来自同一机器标记的数据进行了训练的深度学习(DL)方法,当改变一个或几个条件时,分类精度也会显着恶化。此外,当在另一台机器上测试具有完全不同的健康和错误的信号模式时,它们的性能会大大遭受或可能完全失败。为了满足这一需求,在这项试验研究中,我们提出了一种零射击轴承故障检测方法,无论工作条件,传感器参数或故障特性如何,都可以检测到新的(目标)机器上的任何故障。为了实现这一目标,1D操作生成对抗网络(OP-GAN)首先表征了(a)源机器在各种条件,传感器参数和故障类型下的正常和故障振动信号之间的过渡。然后,对于目标机器,可以产生潜在的故障信号,并且可以在其实际的健康和合成的故障信号上,紧凑而轻质的1D自动驾驶故障检测器进行培训,以便在发生时实时检测真正的故障状况。为了验证所提出的方法,使用两个不同的电动机在不同的条件和传感器位置工作创建了一个新的基准数据集。实验结果表明,这种新型方法可以准确检测到两个目标机器的平均召回率在89%和95%的平均召回率上,无论其类型,严重性和位置如何。
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.