Publication | Open Access
On optimal input design in system identification for control
31
Citations
22
References
2010
Year
Unknown Venue
Nonlinear System IdentificationControl MethodEngineeringUncertainty QuantificationExperiment DesignSystem Identification ExperimentMathematical Control TheoryModel-based Control TechniqueProcess ControlComputer EngineeringSystems EngineeringControl DesignModel Predictive ControlModeling And SimulationOptimal Input DesignSystem Identification
This paper considers a recently proposed framework for experiment design in system identification for control. We study model based control design methods, such as Model Predictive Control, where the model is obtained by means of a prediction error system identification method. The degradation in control performance due to uncertainty in the model estimate is specified by an application cost function. The objective is to find a minimum variance input signal, to be used in system identification experiment, such that the control application specification is guaranteed with a given probability when using the estimated model in the control design. We provide insight in the potentials of this approach by finite impulse response model examples, for which it is possible to analytically solve the optimal input problem. The examples show how the control specifications directly affect the excitation conditions in the system identification experiment.
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