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首页> 外文期刊>Journal of Mechanical Engineering >Pitting Fault Detection of a Wind Turbine Gearbox Using Empirical Mode Decomposition
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Pitting Fault Detection of a Wind Turbine Gearbox Using Empirical Mode Decomposition

机译:基于经验模态分解的风力发电机齿轮箱点蚀故障检测

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The conventional method of detecting a gear fault is to demodulate the vibration signal collected from the gearbox based on the Hilbert transform; however, this requires human intervention and lacks sophistication. Empirical mode decomposition (EMD) is a significant time-frequency tool for adaptively decomposing vibration signals into a collection of intrinsic mode functions (IMFs); a fault feature can be extracted from one of IMFs to reveal the fault location and fault level of a gear or bearing in the mechanical drive system. In this paper, a multi-harmonic vibration model of a gearbox with fault modulation is presented, a conventional demodulation analysis using Hilbert transform is introduced, and the principle of EMD is illustrated. The Hilbert demodulation analysis and EMD are applied to processing field vibration signals collected from a wind turbine gearbox to detect a gear-pitting fault. The results show that EMD can extract the fault modulation information more adaptively and intelligently than Hilbert demodulation analysis can.
机译:检测齿轮故障的常规方法是基于希尔伯特变换对从变速箱收集的振动信号进行解调。但是,这需要人工干预并且缺乏复杂性。经验模态分解(EMD)是一种重要的时频工具,用于将振动信号自适应地分解为一组固有模式函数(IMF)。可以从IMF中的一个提取故障特征,以揭示机械驱动系统中齿轮或轴承的故障位置和故障级别。提出了带有故障调制的变速箱多谐波振动模型,介绍了使用希尔伯特变换的传统解调分析方法,并阐述了EMD的原理。希尔伯特解调分析和EMD用于处理从风力涡轮机变速箱收集的现场振动信号,以检测齿轮-点蚀故障。结果表明,与希尔伯特解调分析相比,EMD可以更自适应,更智能地提取故障调制信息。

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