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Iterative Model Identification of Nonlinear Systems of Unknown Structure: Systematic Data-Based Modeling Utilizing Design of Experiments

Patrick Schrangl, Павло Іванович Ткаченко, Luigi del Re

2020IEEE Control Systems34 citationsDOI

Abstract

High-quality models are essential to the performance of many control-related tasks [1]-[3]. If the structure of the system is known, first principle models can be created (which constitutes the best choice for most uses), especially if they should be used as design tools for parametric studies without having to build the corresponding hardware. However, first principle modeling is hardly possible for many real systems, either because the detailed knowledge of the system structure is not available or the model would be too complex to be useful for control design or to be parameterized. It has become common to use data-driven models, that is, correctly reproducing the input-output behavior of the system without trying to correctly describe its physics. For linear systems, data-driven modeling has been intensively studied, and powerful tools exist [4].

Topics & Concepts

Computer scienceSystem identificationIdentification (biology)Control engineeringParametric statisticsParameterized complexityParametric modelNonlinear systemData modelingAlgorithmEngineeringMathematicsSoftware engineeringPhysicsBiologyStatisticsBotanyQuantum mechanicsControl Systems and IdentificationFault Detection and Control SystemsAdvanced Control Systems Optimization
Iterative Model Identification of Nonlinear Systems of Unknown Structure: Systematic Data-Based Modeling Utilizing Design of Experiments | Litcius