Publication | Closed Access
A parameter optimization method for radial basis function type models
214
Citations
18
References
2003
Year
Numerical AnalysisMathematical ProgrammingParameter EstimationEngineeringRbf-type ModelsNonlinear OptimizationNonlinear System IdentificationParameter IdentificationSystems EngineeringCurve FittingNonlinear SystemsApproximation TheoryStatisticsNonlinear ControlNonlinear Parameter OptimizationModel-based Control TechniqueMultivariate ApproximationRadial Basis FunctionFunctional Data AnalysisParameter Optimization MethodProcess Control
This paper considers the nonlinear systems modeling problem for control. A structured nonlinear parameter optimization method (SNPOM) adapted to radial basis function (RBF) networks and an RBF network-style coefficients autoregressive model with exogenous variable model parameter estimation is presented. This is an off-line nonlinear model parameter optimization method, depending partly on the Levenberg-Marquardt method for nonlinear parameter optimization and partly on the least-squares method using singular value decomposition for linear parameter estimation. When compared with some other algorithms, the SNPOM accelerates the computational convergence of the parameter optimization search process of RBF-type models. The usefulness of this approach is illustrated by means of several examples.
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