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Bearing performance degradation evaluation using recurrence quantification analysis and auto-regression model

机译:基于递归量化分析和自回归模型的轴承性能退化评估

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This paper presents an integrated approach which combines recurrence quantification analysis (RQA) with the auto-regression (AR) model, for evaluating bearing performance degradation, including degradation monitoring and state prediction. RQA is applied to extracting recurrence plot (RP) entropy feature from vibration signals for both monitoring and predicting the bearing degradation through an AR model. The experimental results indicate that the RP entropy can be used as an effective indictor for bearing degradation monitoring. Furthermore, the AR model built upon the RP entropy can predict the bearing failure one hour in advance.
机译:本文提出了一种综合方法,该方法将递归量化分析(RQA)与自回归(AR)模型相结合,用于评估轴承性能退化,包括退化监测和状态预测。 RQA用于从振动信号中提取递归图(RP)熵特征,以通过AR模型监测和预测轴承的退化。实验结果表明,RP熵可以作为轴承退化监测的有效指标。此外,基于RP熵的AR模型可以提前一小时预测轴承故障。

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