风电齿轮箱点蚀故障特征提取的双谱分析

Y. Liu, Yanbing Zhou, Weidong Xin, Ying He, Pengqi Fan
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引用次数: 11

摘要

本文讨论了高阶统计分析理论及其在大型风力发电系统齿轮箱振动信号中点蚀故障特征提取中的应用。利用双谱法抑制实测振动信号中的高斯噪声,揭示故障相关的非高斯信息。我们提出将双谱的双频方案划分为若干分区,并利用与振动信号的非高斯强度相关的各分区的总幅值作为点蚀故障识别的特征值。通过点蚀故障与正常状态的对比结果可以看出,所提出的方法对于从噪声振动信号中提取齿轮点蚀故障信息是有效的,且性能稳定,灵敏度高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bispectrum analysis for feature extraction of pitting fault in wind turbine gearbox
This paper discusses the theory of higher-order statistical analysis and its application in gear pitting fault feature extraction from gearbox vibration signals analysis of a large scale wind turbine generator system (WTGS). The bispectrum was used to inhibit the Gaussian noise in measured vibration signals and to reveal the fault related non-Gaussian information. We propose to divide the dual-frequency plan of bispectrum into several partitions and use the total amplitude value of each partition, which related to the non-Gaussian intensity of vibration signals, as feature values for identification of pitting fault. It can be seen by comparing the results between pitting fault and normal condition that the proposed method are effective for the extraction of gear pitting fault information from noised vibration signals and bring stable performance, high sensitivity.
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