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A Supervised Data-Driven Approach for Wind Turbine Pinion Gear Defect Identification

机译:监督数据驱动的风力发电机小齿轮缺陷识别方法

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The health monitoring of the wind turbine pinion gear has been widely performed to ensure safe operation of the wind turbine. For years, vibration sensors have been routinely installed on wind turbines, claiming some success in preventing accidents. Gear defect recognition based on vibration, however, remains a challenge because the signature of the defect of a gear is usually masked by background noise pollution of the external variable transmission path of the vibration sensor installation. In this paper, the empirical mode decomposition (EMD) method is used to analyze the radial vibration measurement of 3-MW wind turbine gears in the case of a failure in a planetary gear. The vibration signal of EMD involves the subsequent envelope analysis of several intrinsic mode functions (IMFs). The appropriate components are used to characterize the fault feature selection of the gear. The analysis results show that the method has successfully demonstrated the gear failure characteristics and revealed the effectiveness of the EMD scheme.
机译:风力涡轮机小齿轮的健康监测已得到广泛执行,以确保风力涡轮机的安全运行。多年来,振动传感器已常规安装在风力涡轮机上,在防止事故方面取得了一些成功。然而,基于振动的齿轮缺陷识别仍然是一个挑战,因为齿轮缺陷的特征通常被振动传感器装置的外部可变传输路径的背景噪声污染所掩盖。在本文中,经验模态分解(EMD)方法用于分析3兆瓦风力涡轮机齿轮在行星齿轮出现故障的情况下的径向振动测量结果。 EMD的振动信号涉及几个固有模式函数(IMF)的后续包络分析。适当的组件用于表征齿轮的故障特征选择。分析结果表明,该方法已经成功地证明了齿轮的故障特性,并揭示了EMD方案的有效性。

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