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Real time remaining useful life prediction based on nonlinear Wiener based degradation processes with measurement errors

机译:基于带有测量误差的基于Wiener的非线性退化过程的实时剩余使用寿命预测

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摘要

Real time remaining useful life (RUL) prediction based on condition monitoring is an essential part in condition based maintenance (CBM). In the current methods about the real time RUL prediction of the nonlinear degradation process, the measurement error is not considered and forecasting uncertainty is large. Therefore, an approximate analytical RUL distribution in a closed-form of a nonlinear Wiener based degradation process with measurement errors was proposed. The maximum likelihood estimation approach was used to estimate the unknown fixed parameters in the proposed model. When the newly observed data are available, the random parameter is updated by the Bayesian method to make the estimation adapt to the item’s individual characteristic and reduce the uncertainty of the estimation. The simulation results show that considering measurement errors in the degradation process can significantly improve the accuracy of real time RUL prediction.
机译:基于条件监测的实时剩余使用寿命(RUL)预测是基于条件的维护(CBM)的重要组成部分。在关于关于非线性劣化过程的实时RUL预测的当前方法中,不考虑测量误差并预测不确定性大。因此,提出了一种具有测量误差的非线性维纳基于劣化过程的闭合形式的近似分析rul分布。最大似然估计方法用于估计所提出的模型中的未知固定参数。当新观察到的数据可用时,贝叶斯方法更新随机参数,以使估计适应项目的个性特征并降低估计的不确定性。仿真结果表明,考虑降解过程中的测量误差可以显着提高实时RUL预测的准确性。

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