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Wind Turbine Gearbox Fault Detection Using Multiple Sensors With Features Level Data Fusion

机译:具有水平传感器数据融合功能的多传感器风力发电机齿轮箱故障检测

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摘要

Fault detection in complex mechanical systems such as wind turbine gearboxes remains challenging, even with the recently significant advancement of sensing and signal processing technologies. As first-principle models of gearboxes capable of reflecting response details for health monitoring purpose are difficult to obtain, data-driven approaches are often adopted for fault detection, identification or classification. In this paper, we propose a data-driven framework that combines information from multiple sensors and fundamental physics of the gearbox. Time domain vibration and acoustic emission signals are collected from a gearbox dynamics testbed, where both healthy and faulty gears with different fault conditions are tested. To deal with the nonstationary nature of the wind turbine operation, a harmonic wavelet based method is utilized to extract the time-frequency features in the signals. This new framework features the employment of the tachometer readings and gear meshing relationships to develop a speed profile masking technique. The time-frequency wavelet features are highlighted by applying the mask we construct. Those highlighted features from multiple accelerometers and microphones are then fused together through a statistical weighting approach based on principal component analysis. Using the highlighted and fused features, we demonstrate that different gear faults can be effectively detected and identified.
机译:即使在感测和信号处理技术近来取得了重大进步,复杂的机械系统(例如风力涡轮机变速箱)中的故障检测仍然具有挑战性。由于难以获得能够反映用于健康监测目的的响应细节的齿轮箱的第一原理模型,因此通常采用数据驱动的方法来进行故障检测,识别或分类。在本文中,我们提出了一个数据驱动的框架,该框架结合了来自多个传感器和变速箱基本物理原理的信息。从变速箱动力学测试台收集时域振动和声发射信号,在此测试具有不同故障条件的正常和故障齿轮。为了应对风力涡轮机运行的非平稳性,利用基于谐波小波的方法提取信号中的时频特征。这个新框架的特点是利用转速表的读数和齿轮啮合关系来开发速度分布屏蔽技术。时频小波特征通过应用我们构造的遮罩来突出显示。然后,通过基于主成分分析的统计加权方法将来自多个加速度计和麦克风的那些突出功能融合在一起。使用突出显示和融合的功能,我们证明了可以有效地检测和识别不同的齿轮故障。

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