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Wiener–Hammerstein nonlinear system identification using spectral analysis

Adil Brouri

2022International Journal of Robust and Nonlinear Control31 citationsDOI

Abstract

Abstract In this paper, a new approach is developed for the identification of Wiener–Hammerstein model structures. Unlike several other papers, the transfer functions of linear elements are of unknown structure. Indeed, the linear subsystems are not necessarily parametric or FIR. Furthermore, the function of nonlinear block can be nonparametric and noninvertible. The main challenge in identifying a Wiener–Hammerstein system lies in the separation of the dynamics over the input and the output LTI elements. Presently, this issue does not arise, without any conditions being imposed on the frequency band. Then, a two‐stage identification method is suggested. Firstly, the system is excited by a set of constant inputs to capture the system nonlinearity. In the second stage, an identification approach based on the spectral analysis and using periodic input signals is developed to determine the linear elements parameters. In the present method, very interesting concepts are used, like the Fourier decomposition, the frequency approach and the spectrum analysis. Simulations demonstrate that the proposed identification method is both effective and efficient.

Topics & Concepts

Nonlinear systemTransfer functionNonlinear system identificationControl theory (sociology)Parametric statisticsIdentification (biology)System identificationMathematicsComputer scienceFunction (biology)Applied mathematicsEngineeringPhysicsMeasure (data warehouse)Electrical engineeringBotanyControl (management)DatabaseArtificial intelligenceQuantum mechanicsBiologyStatisticsEvolutionary biologyControl Systems and IdentificationIterative Learning Control SystemsStructural Health Monitoring Techniques
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