Using empirical mode decomposition scheme for helicopter main gearbox bearing defect identification

F. Duan, Michael Corsar, D. Mba
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引用次数: 7

Abstract

Vibration sensors for helicopter health and condition monitoring have been widely employed to ensure the safe operation. Through the years, vibration sensors are now commonly placed on helicopters and have claimed a number of successes in preventing accidents. However, vibration based bearing defect identification remains a challenge since bearing defects signatures are usually contaminated by background noise resulting from variable transmission paths from the bearing to the receiving externally mounted vibration sensors. In this paper, the empirical mode decomposition (EMD) scheme was utilized to analyze vibration signal captured from a CS29 Category ‘A’ helicopter main gearbox, where bearing faults were seeded on one of the planetary gears bearing of the second epicyclic stage. The EMD scheme decomposed vibration signal into a number of intrinsic mode functions (IMFs) for subsequent envelope analysis. The selection of appropriate IMFs to characterize bearing fault signatures was discussed. The analysis result showed that the bearing fault signatures were successfully characterized and revealed the efficacy of the EMD scheme.
基于经验模态分解的直升机主齿轮箱轴承缺陷识别方法
为保证直升机的安全运行,振动传感器在直升机健康状态监测中得到了广泛的应用。多年来,振动传感器现在普遍安装在直升机上,并声称在防止事故方面取得了一些成功。然而,基于振动的轴承缺陷识别仍然是一个挑战,因为轴承缺陷特征通常受到从轴承到接收外部安装的振动传感器的可变传输路径所产生的背景噪声的污染。本文采用经验模态分解(EMD)方法对CS29“a”类直升机主齿轮箱的振动信号进行了分析,该主齿轮箱的轴承故障发生在第二周转级的一个行星齿轮轴承上。EMD方案将振动信号分解为若干内禀模态函数(IMFs),用于后续的包络分析。讨论了如何选择合适的IMFs来表征轴承故障特征。分析结果表明,该方法对轴承故障特征进行了成功的特征化,显示了EMD方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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