Publication | Closed Access
Computational aspects of maximum likelihood estimation and reduction in sensitivity function calculations
269
Citations
27
References
1974
Year
Numerical AnalysisMathematical ProgrammingParameter EstimationEngineeringMaximum Likelihood EstimationSingular Information MatrixNonlinear OptimizationState EstimationNonlinear System IdentificationParameter IdentificationPde-constrained OptimizationUncertainty QuantificationSystems EngineeringSensitivity AnalysisEstimation TheoryStatisticsDensity EstimationComputational AspectsMathematical Control TheoryState Sensitivity FunctionsSensitivity Function CalculationsInverse ProblemsState-vector FormStatistical Inference
This paper discusses numerical aspects of computing maximum likelihood estimates for linear dynamical systems in state-vector form. Different gradient-based nonlinear programming methods are discussed in a unified framework and their applicability to maximum likelihood estimation is examined. The problems due to singular Hessian or singular information matrix that are common in practice are discussed in detail and methods for their solution are proposed. New results on the calculation of state sensitivity functions via reduced order models are given. Several methods for speeding convergence and reducing computation time are also discussed.
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