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Fault Diagnosis of Rolling Element Bearing Using Artificial Neural Networks

机译:使用人工神经网络的滚动元件轴承故障诊断

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Bearings are one of the most crucial components of rotating machinery. The condition of bearing contributes to overall machine performance. It is thus important to analyze the faults in the bearing in earlier stage in order avoid catastrophic failure. The condition monitoring based on vibration measurement can be used to identify defects in bearing. The present study is carried out to identify the effect on vibration spectrum of a ball bearing having defect at inner race using FFT analyzer. An experimental setup is developed. The fault is created at the inner race of the bearing by using electrical discharge machining (EDM). The frequency spectrum is acquired for faulty as well as healthy bearing using FFT analyzer. It can be concluded that high Peak in amplitude of vibration observed at BPFI in frequency spectrum indicates that fault is present at inner race of ball bearing. Only experimental observation methods depend on human knowledge and experience, which shows error. Therefore, it is necessary to detect fault without human intervention automatically using a computer. This study gives overall review for fault diagnosis using Artificial Intelligence. The experimental data is used for training and testing the Artificial Neural Network (ANN) to detect the fault automatically in MATLAB environment. The accuracy of ANN is found to be 94.27%. The results are in close agreement for the similar condition available in literature.
机译:轴承是旋转机械最重要的部件之一。轴承的条件有助于整体机器性能。因此,重要的是在更早的阶段分析轴承中的断层,以避免灾难性的故障。基于振动测量的状态监测可用于识别轴承的缺陷。进行本研究,以识别使用FFT分析仪在内部竞技中具有缺陷的滚珠轴承振动谱的影响。开发了一个实验设置。通过使用电气放电加工(EDM)在轴承内部竞争中产生故障。使用FFT分析仪获取频谱以进行故障以及健康轴承。可以得出结论,在频谱中观察到在BPFI的振动幅度的高峰表示滚珠轴承内部的故障。只有实验观察方法依赖于人类的知识和经验,显示出错误。因此,有必要使用计算机自动检测没有人为干预的故障。本研究介绍了使用人工智能的故障诊断综述。实验数据用于培训和测试人工神经网络(ANN)以在Matlab环境中自动检测故障。 ANN的准确性被发现为94.27%。结果恰好达成了文献中可用的类似条件。

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