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Vibration based diagnostics for bearing faults and gear wear

机译:基于振动的轴承故障和齿轮磨损诊断

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摘要

This thesis investigates vibration based machine condition monitoring and consists of two parts: bearing fault diagnosis and gear wear monitoring.In the first part, a signal processing method to diagnose localised bearing faults in the presence of periodic impulsive noise has been developed and tested on signals measured from two rigs. The method developed for bearing diagnosis aims at selecting suitable frequency bands that exclude those impulsive noises and retain the feature of impulsiveness of bearing fault signals. This is realised by using a parameter considering the energy and energy distribution of envelope signals in the frequency domain, and its efficiency is demonstrated by comparison with the Fast Kurtogram and Protrugram. The second part presents a newly developed vibration indicator for the monitoring of gear wear. Even though gear vibrations are closely related with tooth wear, a vibration based wear monitoring method has not been well established. In this work, an averaged logarithmic ratio (ALR) is calculated from time synchronous averaged gear signals to evaluate the effects of tooth wear on gear transmissions. The indicator ALR, calculated with a fixed reference, can be used as a wear severity index, while an alternative version of the indicator, mALR, is calculated with a moving reference and can be used to show the evolution of gear transmission features. In addition, these indicators can also be used as a general parameter for gearbox condition monitoring.Based on the proposed vibration indicators, a framework is established to integrate vibration and wear particle analysis for gear condition monitoring. In the framework, the proposed vibration indicators are first used for fault detection and classification. The faults are then categorised into two groups, structure- and wear-related faults, which dictates how the analysis methods are applied and ensures that wear particle analysis is only used when strictly required. The feasibility and efficiency of this framework are demonstrated by application to three laboratory gear tests, with promising results.
机译:本文研究基于振动的机器状态监测,包括轴承故障诊断和齿轮磨损监测两部分。第一部分,开发了一种在周期性脉冲噪声存在下诊断局部轴承故障的信号处理方法,并对信号进行了测试。从两个钻机测量。为轴承诊断而开发的方法旨在选择合适的频带,以排除那些脉冲噪声并保留轴承故障信号的脉冲特征。这是通过使用考虑频域中包络信号的能量和能量分布的参数来实现的,并且通过与快速Kurtogram和Protrugram进行比较来证明其效率。第二部分介绍了一个新开发的振动指示器,用于监测齿轮磨损。尽管齿轮振动与牙齿磨损密切相关,但基于振动的磨损监测方法尚未得到很好的建立。在这项工作中,根据时间同步平均齿轮信号计算平均对数比(ALR),以评估齿轮磨损对齿轮传动的影响。指标ALR(使用固定参考值计算)可以用作磨损严重性指标,而指标的替代版本mALR可以使用移动参考值进行计算,并且可以用于显示齿轮传动功能的演变。此外,这些指标还可以用作齿轮箱状态监测的通用参数。基于提出的振动指标,建立了一个框架,将振动和磨损颗粒分析相集成以进行齿轮状态监测。在该框架中,建议使用的振动指示器首先用于故障检测和分类。然后将这些故障分为与结构有关的故障和与磨损有关的故障两大类,这些故障决定了如何应用分析方法,并确保仅在严格要求时才使用磨损颗粒分析。该框架在三个实验室齿轮测试中的应用证明了该框架的可行性和有效性,并取得了可喜的结果。

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