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Use of Autoregressive Conditional Heteroskedasticity Model to Assess Gear Tooth Surface Roughness

机译:使用自回归条件异方差模型评估齿轮齿表面粗糙度

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Gear wear is inevitable during the service life of gearboxes and may lead to catastrophic failure. As an important micro-level wear feature, tooth surface roughness directly affects the gear wear progression (lubrication regimes, wear mechanisms and wear rates) and lifespan of a gearbox. Therefore, it is important to monitor surface roughness changes. The tooth surface roughness induces random vibration signals with cyclic amplitude modulation. Reported works used an indicator of second-order cyclostationarity (ICS2) to assess such signals. However, the ICS2 gives a poor correlation with surface roughness. This paper presents the use of an Autoregressive Conditional Heteroskedasticity (ARCH) model to represent the random vibration signals with cyclic amplitude modulation. ARCH model parameter serves as an indicator to assess the changes in gear tooth surface roughness. A laboratory dataset was used to validate the effectiveness of the ARCH model in assessing surface roughness level. Results have shown that using the ARCH model returns a more accurate assessment result than the ICS2.
机译:在变速箱的使用寿命期间不可避免地会发生齿轮磨损,并可能导致灾难性的故障。作为重要的微级磨损特征,齿表面粗糙度直接影响齿轮的磨损进程(润滑方式,磨损机理和磨损率)和齿轮箱的寿命。因此,监视表面粗糙度变化很重要。牙齿表面粗糙度会产生周期性振幅调制的随机振动信号。报告的作品使用了二阶循环平稳性指标(ICS2)来评估此类信号。但是,ICS2与表面粗糙度的相关性很差。本文提出了使用自回归条件异方差(ARCH)模型来表示具有循环幅度调制的随机振动信号的方法。 ARCH模型参数可作为评估齿轮齿表面粗糙度变化的指标。使用实验室数据集来验证ARCH模型在评估表面粗糙度水平方面的有效性。结果表明,与ICS2相比,使用ARCH模型返回的评估结果更为准确。

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