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Improved Box-Cox Transformation Based Residual Life Predictions for Bearings

机译:改进基于箱体的轴承寿命预测

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Rolling element bearing is one of the most critical components in rotating machines. Effectively predicting the Remaining Useful Life (RUL) of the bearing can prevent the occurrence of sudden equipment failure. In this paper, the time-domain features of bearing vibration signals are extracted and then these features are fused. In order to establish a more accurate prediction model, the health state of bearing is divided into health stage and degradation stage by 3σ principles. In degradation stage, the Box-Cox transformation method is applied on the data. The transformation parameter λ of the sample number curve is further predicted by Support Vector Regression (SVR). Then, Box-Cox transformation is performed using the predicted parameter λ and a linear degradation model is established to predict the RUL of the bearing. Finally, the effectiveness of the proposed approach is verified with the experimental data on bearings’ accelerated life tests provided by FEMTO-ST institute.
机译:滚动元件轴承是旋转机器中最关键的部件之一。有效地预测轴承的剩余使用寿命(RUL)可以防止突然设备故障发生。在本文中,提取了轴承振动信号的时域特征,然后融合了这些特征。为了建立更准确的预测模型,通过3σ原理将轴承的健康状况分为健康阶段和降解阶段。在劣化阶段,盒Cox转换方法应用于数据。通过支持向量回归(SVR)进一步预测样品数曲线的变换参数λ。然后,使用预测参数λ执行盒式Cox变换,建立线性劣化模型来预测轴承的rul。最后,通过Femto-St研究所提供的轴承加速寿命测试的实验数据验证了所提出的方法的有效性。

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