基于FMEA和零弹学习的旋转机械故障诊断

Boyang Zhao, Tong Li, Wei Dai, Junjun Dong
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引用次数: 2

摘要

数据驱动的智能故障诊断是目前的研究热点。然而,实际工况下采集到的故障数据有限,导致在实际工程中依赖平衡数据的故障诊断模型的诊断能力下降。幸运的是,将机器视觉中的零射击学习应用到旋转机械故障诊断中,可以解决某些故障类别的零射击问题。受此启发,我们提出了一种基于失效模式与影响分析(FMEA)的属性描述方法,解决旋转机械故障数据的语义描述问题,从而用于旋转机械的零弹故障诊断。该框架基于FMEA分析了旋转机械的故障模式,建立了故障属性字典。然后,利用数据的多域特征训练属性分类器。最后,基于欧氏距离对未知类别的故障数据进行诊断。公共数据集验证了该框架的有效性。该框架为旋转机械零弹故障诊断提供了新的视角。
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Fault Diagnosis of Rotating Machinery Based on FMEA and Zero-shot Learning
Data-driven intelligent fault diagnosis is now a research hotspot. However, the fault data collected in actual working conditions is limited, which leads to a decline in the diagnostic ability of fault diagnosis models that rely on balanced data in actual engineering. Fortunately, the zero-shot problem for some fault classes can be solved by transferring zero-shot learning from machine vision to rotating machinery fault diagnosis. Inspired by this, we propose an attribute description method based on Failure Mode and Effects Analysis (FMEA) to solve the problem of semantic description of rotating machinery fault data, so as to be used for zero-shot fault diagnosis of rotating machinery. The framework analyzes the failure modes of rotating machinery based on FMEA, and establishes a fault attribute dictionary. After that, the attribute classifier is trained using the multi-domain features of the data. Finally, the fault data of unknown class is diagnosed based on Euclidean distance. The effectiveness of the framework is verified by public datasets. This framework provides a new perspective for zero-shot fault diagnosis of rotating machinery.
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