利用连续小波变换对风力涡轮机齿轮进行故障分析

Alexandre Medeiros, Raphael Cardoso, José Oliveira Júnior, Salete Alves
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引用次数: 0

摘要

风力涡轮机故障的主要原因之一是功率转换和转速变化过程中齿轮齿间的磨损,这通常也与润滑系统的变化有关。从这个意义上讲,振动和信号分析经常用于预测性维护,因为它们通常可以识别设备正常运行中的偏差。因此,这项工作旨在应用连续小波变换(CWT),通过直观和简单的分析,将齿轮磨损和振动信号联系起来。齿轮系统的实验装置被用来分析不同齿形齿轮损坏产生的振动信号。为了评估振动信号对不同损伤程度和损伤模式的敏感性,使用了不同损伤程度和损伤模式的齿轮。通过 Morlet 小波分析提取振动信号的特征。结果表明,通过频率-时间图的可视化,所提出的方法能准确检测出早期故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Failure analysis of gear using continuous wavelet transform applied in the context of wind turbines
One of the main reasons for failure in the wind turbine is the wear between the gear teeth during the power conversion and changes in the rotation speed, which is also generally associated with changes in the lubrication regimes. In this sense, vibration and signal analysis are frequently used in predictive maintenance as they usually permit the identification of deviations in the proper functioning of the equipment. Thus, this work aims to apply the continuous wavelet transform (CWT) to correlate gear wear and vibration signals, using visual and straightforward analysis. An experimental setup of a gear system was used to analyze vibration signals from different tooth gear damages. Gears with different levels and modes of damage were used in order to evaluate the sensitivity of vibration signals to them. The features from vibration signals were extracted by Morlet wavelet analysis. Results demonstrate that the proposed method accurately detected the early failure by visualization in frequency–time maps.
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