Publication | Closed Access
Nonparametric estimation of the shape function in a Gamma process for degradation data
32
Citations
18
References
2009
Year
Parameter EstimationReliability EngineeringEngineeringDensity EstimationDeterioration ModelingGamma Process ModelCivil EngineeringDegradation DataStatistical InferenceShape FunctionGamma ProcessCurve FittingNonparametric EstimationEstimation TheoryFunctional Data AnalysisStatisticsService Life PredictionStochastic Modeling
Abstract The author considers estimation under a Gamma process model for degradation data. The setting for degradation data is one in which n independent units, each with a Gamma process with a common shape function and scale parameter, are observed at several possibly different times. Covariates can be incorporated into the model by taking the scale parameter as a function of the covariates. The author proposes using the maximum pseudo‐likelihood method to estimate the unknown parameters. The method requires usage of the Pool Adjacent Violators Algorithm. Asymptotic properties, including consistency, convergence rate and asymptotic distribution, are established. Simulation studies are conducted to validate the method and its application is illustrated by using bridge beams data and carbon‐film resistors data. The Canadian Journal of Statistics 37: 102‐118; 2009 © 2009 Statistical Society of Canada
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