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Fault diagnosis of rolling element bearing using time-domain features and neural networks

机译:基于时域特征和神经网络的滚动轴承故障诊断

摘要

Rolling element bearings are critical mechanical components in rotating machinery. Fault detection and diagnosis in the early stages of damage is necessary to prevent their malfunctioning and failure during operation. Vibration monitoring is the most widely used and cost-effective monitoring technique to detect, locate and distinguish faults in rolling element bearings. This paper presents an algorithm using feed forward neural network for automated diagnosis of localized faults in rolling element bearings. Normal negative log-likelihood value and kurtosis value extracted from time-domain vibration signals are used as input features for the neural network. Trained neural networks are able to classify different states of the bearing with 100% accuracy. The proposed procedure requires only a few input features, resulting in simple preprocessing and faster training. Effectiveness of the proposed method is illustrated using the bearing vibration data obtained experimentally.
机译:滚动轴承是旋转机械中的关键机械组件。在损坏的早期阶段,必须进行故障检测和诊断,以防止其在运行期间发生故障和故障。振动监测是使用最广泛,成本效益最高的监测技术,用于检测,定位和区分滚动轴承的故障。本文提出了一种使用前馈神经网络的算法,用于对滚动轴承的局部故障进行自动诊断。从时域振动信号提取的正常负对数似然值和峰度值用作神经网络的输入特征。经过训练的神经网络能够以100%的准确度对轴承的不同状态进行分类。所建议的过程仅需要几个输入功能,从而可以进行简单的预处理和更快的培训。利用实验获得的轴承振动数据说明了该方法的有效性。

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