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Real time remaining useful life prediction based on nonlinear Wiener based degradation processes with measurement errors 被引量:21

Real time remaining useful life prediction based on nonlinear Wiener based degradation processes with measurement errors
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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. 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.
出处 《Journal of Central South University》 SCIE EI CAS 2014年第12期4509-4517,共9页 中南大学学报(英文版)
基金 Projects(51475462,61374138,61370031)supported by the National Natural Science Foundation of China
关键词 使用寿命预测 剩余使用寿命 降解过程 测量误差 非线性 实时 维纳 估计方法 remaining useful life Wiener based degradation process measurement error nonlinear maximum likelihood estimation Bayesian method
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参考文献31

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共引文献24

同被引文献153

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