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Separation identification approach for the <scp>Hammerstein‐Wiener</scp> nonlinear systems with process noise using correlation analysis

Feng Li, Mingjun Liang, Naibao He, Qingfeng Cao

2023International Journal of Robust and Nonlinear Control22 citationsDOI

Abstract

Abstract This article develops a novel separation identification approach for the Hammerstein‐Wiener nonlinear systems with process noise using correlation analysis technique. The Hammerstein‐Wiener nonlinear systems have three parts, namely, an input nonlinear block, a linear block, and an output nonlinear block. The designed hybrid signals that consist of separable signal and random signal are devoted to achieving parameters separation identification of the Hammerstein‐Wiener nonlinear system, that is, the three blocks are identified independently. First, the characteristics of separable signals under the action of static nonlinear block are analyzed, and two groups of separable signals with amplitude relation are utilized to estimate parameters of output nonlinear block. Moreover, the linear block parameters are identified by using correlation analysis approach, which deals with effectively immeasurable problem of internal variable information. Finally, the data filtering technique is implemented to weaken the influence of noises, and filtering‐based recursive extended least squares algorithm is developed for figuring out the parameters of nonlinear block and colored noise model. The validity and accuracy of the proposed scheme are verified by two simulations, and simulation results exhibit that the proposed method can obtain higher identification precision and better robustness than the existing identification algorithms.

Topics & Concepts

Nonlinear systemRobustness (evolution)Block (permutation group theory)Control theory (sociology)MathematicsWiener filterNonlinear system identificationBlind signal separationSignal processingAlgorithmSystem identificationComputer scienceArtificial intelligenceDigital signal processingData modelingTelecommunicationsChemistryGeneControl (management)Quantum mechanicsChannel (broadcasting)GeometryBiochemistryComputer hardwareDatabasePhysicsControl Systems and IdentificationAdvanced Adaptive Filtering TechniquesImage and Signal Denoising Methods
Separation identification approach for the <scp>Hammerstein‐Wiener</scp> nonlinear systems with process noise using correlation analysis | Litcius