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Selection of optimal parameter set using estimability analysis and MSE-based model-selection criterion
73
Citations
31
References
2011
Year
Parameter EstimationEngineeringMse-based Model-selection CriterionParameter IdentificationOptimal ParameterUncertainty QuantificationSystems EngineeringBiostatisticsEstimability AnalysisModeling And SimulationEstimation TheoryMeasurement UncertaintiesStatisticsModel ComparisonComplex Mathematical ModelsParameter TuningProcess ControlStatistical InferenceModel Analysis
Parameter estimation in complex mathematical models is difficult, especially when there are too many unknown parameters to estimate, and the available data for parameter estimation are limited. Estimability analysis ranks parameters from most estimable to least estimable based on the model structure, uncertainties in initial parameter guesses, measurement uncertainties, and experimental settings. Difficulties associated with poor numerical conditioning are avoided by only estimating those parameters that are most estimable. The remaining parameters are left at their initial values or can be removed from the model via simplification. In this paper, a mean squared error (MSE)-based model-selection criterion is used to determine the optimal number of parameters to estimate from the ranked parameter list, so that the most reliable model predictions can be obtained. This methodology is illustrated using a dynamic chemical reactor model.
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