基于声学分析的感应电机状态监测研究进展

Nipuna Rajapaksha, S. Jayasinghe, H. Enshaei, N. Jayarathne
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引用次数: 1

摘要

文献中讨论的最常见的感应电机故障有三种类型,即轴承故障、定子故障和转子故障。这些故障通常会导致意外故障或意外关闭im。而一种可靠的状态监测方法可以保证其安全不间断运行。声信号分析是一种有效的状态监测技术,用于识别机械设备的早期故障,而人工智能(AI)技术已被广泛地与机器学习(ML)算法相结合,以实现机械设备状态监测过程的自动化。本文综述了声信号分析在检测IMs即将发生故障中的应用。此外,还详细讨论了从原始声学数据中获得的时域和频域分析技术和特征。本文还介绍了为提高故障诊断准确性而开发的智能状态监测系统,以及基于声信号分析的IMs状态监测的最新进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acoustic Analysis Based Condition Monitoring of Induction Motors: A Review
The most common Induction Motor (IM) faults discussed in literature are of three types, namely, bearing faults, stator faults, and rotor faults. These faults often result in unexpected failures or unplanned shutdowns of IMs. A reliable condition monitoring method, however, can ensure their safe and uninterrupted operation. The acoustic signal analysis is one of the effective condition monitoring techniques used to identify incipient faults in IMs while Artificial Intelligence (AI) technology has been widely integrated with Machine Learning (ML) algorithms to automate the machinery condition monitoring process. This paper reviews application of acoustic signal analysis to detect impending failures of IMs. Moreover, time domain and frequency domain analysis techniques and features that can be derived from raw acoustic data are also discussed in detail. The paper also presents intelligent condition monitoring systems that are developed to improve fault diagnostic accuracy and recent developments in acoustic signal analysis based condition monitoring of IMs.
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