Publication | Closed Access
Remaining Useful Life Prediction for a Nonlinear Heterogeneous Wiener Process Model With an Adaptive Drift
129
Citations
36
References
2015
Year
Nonlinear FilteringEngineeringLife PredictionNonlinear Degradation TrajectoriesStochastic PhenomenonDeterioration ModelingState EstimationData ScienceUncertainty QuantificationStochastic ProcessesSystems EngineeringEstimation TheoryStatisticsService Life PredictionNonlinear Time SeriesAdaptive DriftForecastingDegradation DriftStochastic ModelingDegradation TrajectoriesUseful Life Prediction
Nonlinear degradation trajectories are encountered frequently, and not all of them evolve homogeneously in practical systems. To take nonlinearity, heterogeneity, and the entire historical degradation data into account, we propose a nonlinear heterogeneous Wiener process model with an adaptive drift to characterize degradation trajectories. A state-space based method is employed to delineate our model. Due to the introduction of the adaptive drift, it is difficult to directly apply Kalman filter methods to update the distribution of the estimated degradation drift. To address this issue, we develop an online filtering algorithm based on Bayes' theorem. The expectation-maximization (EM) algorithm, as well as a novel Bayes'-theorem-based smoother, are adopted to estimate the unknown parameters in our model. Moreover, the distribution of the predicted remaining useful life (RUL) incorporating the complete distribution of the estimated degradation drift is achieved analytically. Finally, a simulation, and a case study are provided to validate the proposed approach.
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