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Wind turbine gearbox health monitoring using time-frequency features from multiple sensors

机译:使用来自多个传感器的时频功能对风力发电机齿轮箱进行健康监测

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As wind energy plays an increasingly important role in the US and world electricity supply, maintenance of wind turbines emerges as a critical issue. Because of the remote nature of wind turbines, autonomous and robust health monitoring techniques are necessary. Detecting faults in complex systems such as wind turbine gearboxes remains challenging, even with the recently significant advancement of sensing and signal processing technologies. In this paper, we collect time domain signals from a gearbox test bed on which either a healthy or a faulty gear is installed. Then a harmonic wavelet based method is used to extract time-frequency features. We also develop a speed profile masking technique to account for tachometer readings and gear meshing relationship. Features from multiple sources are then fused together through a statistical weighting approach based on principal component analysis. Using the fused time-frequency features, we demonstrate that different gear faults can be effectively identified through a simple decision making algorithm.
机译:随着风能在美国和世界电力供应中扮演着越来越重要的角色,风力涡轮机的维护成为一个关键问题。由于风力涡轮机的远程特性,因此需要自主且强大的健康监控技术。即使在感测和信号处理技术最近取得重大进展的情况下,检测复杂系统(例如风力涡轮机变速箱)中的故障仍然具有挑战性。在本文中,我们从安装了正常或故障齿轮的变速箱测试台收集时域信号。然后使用基于谐波小波的方法提取时频特征。我们还开发了一种速度曲线掩蔽技术,以解决转速表读数和齿轮啮合关系。然后通过基于主成分分析的统计加权方法将来自多个来源的要素融合在一起。使用融合的时频特征,我们证明了通过简单的决策算法可以有效地识别出不同的齿轮故障。

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