Advanced Vibration Signal Processing Using Edge Computing to Monitor Wind Turbine Drivetrains

C. Peeters, T. Verstraeten, A. Nowé, P. Daems, J. Helsen
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引用次数: 2

Abstract

This paper illustrates an integrated monitoring approach for wind turbines exploiting this Industry 4.0 context. Our combined edge-cloud processing approach is documented. We show edge processing of vibration data captured on a wind turbine gearbox to extract diagnostic features. Focus is on statistical indicators. Real-life signals collected on an offshore turbine are used to illustrate the concept of local processing. The NVIDIA Jet-son platform serves as edge computation medium. Furthermore, we show an integrated failure detection and fault severity assessment at the cloud level. Health assessment and fault localization combines state-of-the-art vibration signal processing on high frequency data (10kHz and higher) with machine learning models to allow anomaly detection for each processing pipeline. Again this is illustrated using data from an offshore wind farm. Additionally, the fact that data of similar wind turbines in the farm is collected allows for exploiting system similarity over the fleet.
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利用边缘计算的先进振动信号处理来监测风力涡轮机传动系统
本文阐述了一种利用工业4.0背景的风力涡轮机综合监测方法。我们的结合边缘云处理方法被记录下来。我们展示了在风力涡轮机齿轮箱上捕获的振动数据的边缘处理,以提取诊断特征。重点是统计指标。在海上涡轮机上收集的真实信号被用来说明本地处理的概念。NVIDIA Jet-son平台作为边缘计算介质。此外,我们展示了在云级别集成的故障检测和故障严重性评估。健康评估和故障定位将最先进的高频数据(10kHz及更高)振动信号处理与机器学习模型相结合,允许对每个处理管道进行异常检测。同样,这是用海上风力发电场的数据来说明的。此外,收集了农场中类似风力涡轮机的数据,可以利用整个船队的系统相似性。
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