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Gearbox Fault Detection Using Exponentially Weighted Moving Average Control Charts

机译:齿轮箱故障检测使用指数加权移动平均控制图

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Gearbox is commonly used in many manufacturing and engineering applications. An accurate condition monitoring and health assessment is necessary and important to detect faults in gearbox to monitor machinery performance and avoid machine breakdown. This paper aims to demonstrate an approach for the condition monitoring of gearbox to recognize the fault at an initial stage by applying control chart as a tool by analyzing the acceleration-time domain signals. In this paper, time series model is used to extract the features characterizing faults and the exponentially weighted moving average control (EWMA) charts are obtained to monitor the deviations in the feature values. The variation of these features is monitored using EWMA control charts. The gear fault can be simulated in gearbox by different techniques. The most commonly observed fault in the gearbox is gear tooth failure due to scoring, wear, pitting and tooth fracture and it can be simulated by partial tooth removal during the experiment. In this study experiment, the fault with increasing severity is simulated on the spur gear tooth by filing operation. Experimental data for healthy gear and gear with three stages gear tooth removal, i.e. 37.5, 75 and 100% is acquired. EWMA charts were plotted using the data collected for the above severity of faults and it is observed that the control chart is an effective tool in identifying the deviation from the normal condition.
机译:变速箱通常用于许多制造和工程应用。准确的条件监测和健康评估是必要的,并且对于检测齿轮箱中的故障来监测机械性能并避免机器故障,是必要的。本文旨在通过分析加速 - 时域信号,展示齿轮箱条件监测的方法,以通过将控制图作为工具作为工具来识别故障。在本文中,时间序列模型用于提取特征故障的特征,并且获得指数加权移动平均控制(EWMA)图表监视特征值中的偏差。使用EWMA控制图监测这些功能的变化。可以通过不同的技术在变速箱中模拟齿轮故障。齿轮箱中最常见的故障是由于刻痕,磨损,凹陷和齿骨折而导致的齿轮齿失效,并且可以通过在实验期间的部分齿移除来模拟。在该研究实验中,通过归档操作模拟了严重程度增加的故障。采用具有三个阶段齿轮齿轮齿齿的健康齿轮和齿轮的实验数据,即37.5,75和100%。使用收集的数据绘制了EWMA图表,该数据用于上述故障严重性,并且观察到控制图表是识别与正常情况偏差的有效工具。

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