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On the Accuracy of Fault Diagnosis for Rolling Element Bearings Using Improved DFA and Multi-Sensor Data Fusion Method

机译:采用改进的DFA和多传感器数据融合方法对滚动元件轴承故障诊断的准确性

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摘要

Rolling element bearings are widely employed in almost every rotating machine. The health status of bearings plays an important role in the reliability of rotating machines. This paper deals with the principle and application of an effective multi-sensor data fusion fault diagnosis approach for rolling element bearings. In particular, two single-axis accelerometers are employed to improve classification accuracy. By applying the improved detrended fluctuation analysis (IDFA), the corresponding fluctuations detrended by the local fit of vibration signals are evaluated. Then the polynomial fitting coefficients of the fluctuation function are selected as the fault features. A multi-sensor data fusion classification method based on linear discriminant analysis (LDA) is presented in the feature classification process. The faults that occurred in the inner race, cage, and outer race are considered in the paper. The experimental results show that the classification accuracy of the proposed diagnosis method can reach 100%.
机译:滚动元件轴承几乎广泛采用几乎每台旋转机器。轴承的健康状况在旋转机器的可靠性中起着重要作用。本文涉及用于滚动元件轴承有效多传感器数据融合故障诊断方法的原理和应用。特别地,采用两个单轴加速度计来提高分类精度。通过应用改进的衰减波动分析(IDFA),评估通过局部振动信号的局部拟合施加的相应波动。然后选择波动函数的多项式拟合系数作为故障特征。基于线性判别分析(LDA)的多传感器数据融合分类方法在特征分类过程中提出。本文考虑了内部种族,笼子和外部种族中发生的故障。实验结果表明,所提出的诊断方法的分类准确性可达100%。

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