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Bearing Fault Detection and Classification Using ANC-Based Filtered Vibration Signal

机译:使用基于ANC的滤波振动信号进行轴承故障检测和分类

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摘要

The defective bearing in a rotating machine may affect its performance and hence reduce its efficiency. So the monitoring of bearing health and its fault diagnosis is essential. A vibration signature is one of the measuring parameters for fault detection. However, this vibration signature may get corrupted with noise. As a result this noise must be removed from the actual vibration signature before its analysis to detect and diagnose the fault. ANC (adaptive noise control)-based filtering techniques are used for this noise removal and hence to improve the SNR (signal-to-noise ratio). In our study an experimental setup is developed and then the proposed work is executed in three stages. In the first stage the vibration signatures are acquired and then ANC is implemented to remove the background noise. In the second stage the time (statistical) and the frequency analysis of the filtered vibration signals are done to detect the fault. In the third stage the statistical parameters of the vibration signatures are used for the classification of the fault present in the bearing using random forest and J48 classifiers.
机译:旋转机械中的轴承损坏可能会影响其性能,从而降低其效率。因此,监测轴承健康状况及其故障诊断至关重要。振动信号是用于故障检测的测量参数之一。但是,这种振动信号可能会因噪音而损坏。结果,必须在分析振动以检测和诊断故障之前将其从实际振动信号中消除。基于ANC(自适应噪声控制)的滤波技术可用于这种噪声去除,从而提高SNR(信噪比)。在我们的研究中,开发了实验装置,然后在三个阶段中执行了拟议的工作。在第一阶段,获取振动信号,然后实施ANC去除背景噪声。在第二阶段,对滤波后的振动信号进行时间(统计)和频率分析,以检测故障。在第三阶段,使用随机森林和J48分类器将振动特征的统计参数用于轴承中故障的分类。

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