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A nonlinear degradation model based method for remaining useful life prediction of rolling element bearings

机译:基于非线性降解模型的滚动元件轴承剩余寿命预测的基于方法

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This paper proposes a nonlinear degradation model based method for remaining useful life (RUL) prediction of rolling element bearings. First, a new nonlinear degradation model is constructed which considers four variable sources of stochastic degradation processes of bearings simultaneously, i.e., the temporal variability, the unit-to-unit variability, the measurement variability and the nonlinear variability. Then a Kalman particle filtering (KPF) algorithm is applied to estimate the state and predict the RUL of bearings. The effectiveness of the nonlinear degradation model based method is demonstrated using simulated degradation processes and accelerated degradation tests of rolling element bearings. The results show that the nonlinear model performs better than the linear model in describing the degradation processes of bearings, and KPF is more effective in the state estimation and RUL prediction of bearings than the Kalman filtering and the particle filtering algorithms.
机译:本文提出了一种基于非线性降解模型的剩余寿命(RUL)预测滚动元件轴承的预测。首先,构造了一种新的非线性降解模型,其同时考虑四个变速劣化过程的四种可变劣化过程,即时间可变性,单位到单位可变性,测量变异性和非线性变异性。然后应用卡尔曼粒子滤波(KPF)算法来估计状态并预测轴承的rul。基于非线性降解模型的方法的有效性使用模拟劣化过程和滚动元件轴承的加速降解试验说明。结果表明,非线性模型比描述轴承的劣化过程更好地执行线性模型,并且KPF在轴承的状态估计和轴预测中比卡尔曼滤波和粒子过滤算法更有效。

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