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Hierarchical fractional-order Hammerstein system identification

Soumaya Marzougui, Asma Atitallah, Saïda Bedoui, Kamel Abderrahim

2021International Journal of Systems Science19 citationsDOI

Abstract

For the fractional-order Hammerstein system with white noise, the difficulty of identification is that the parameters of the linear and the nonlinear blocks and the fractional order are unknown and the intermediate variable and the states are unmeasurable. To overcome this difficulty, we transform the system from an input nonlinear pseudo-state-space system to an input–output representation and we develop an algorithm based on the Recursive Least Squares, the Levenberg–Marquardt and the Auxiliary Model Principle. The convergence of the identified parameters is studied. The performance of the proposed algorithm are tested by two numerical examples.

Topics & Concepts

Nonlinear systemConvergence (economics)Control theory (sociology)Representation (politics)MathematicsSystem identificationFractional-order systemNonlinear system identificationNoise (video)Identification (biology)State-space representationWhite noiseAlgorithmFractional calculusApplied mathematicsComputer scienceArtificial intelligenceData modelingLawPoliticsBiologyStatisticsBotanyQuantum mechanicsEconomicsPolitical scienceImage (mathematics)DatabaseEconomic growthPhysicsControl (management)Control Systems and IdentificationAdvanced Control Systems DesignFault Detection and Control Systems
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