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Auxiliary Model-Based Multi-Innovation Fractional Stochastic Gradient Algorithm for Hammerstein Output-Error Systems

Chen Xu, Yawen Mao

2021Machines13 citationsDOIOpen Access PDF

Abstract

This paper focuses on the nonlinear system identification problem, which is a basic premise of control and fault diagnosis. For Hammerstein output-error nonlinear systems, we propose an auxiliary model-based multi-innovation fractional stochastic gradient method. The scalar innovation is extended to the innovation vector for increasing the data use based on the multi-innovation identification theory. By establishing appropriate auxiliary models, the unknown variables are estimated and the improvement in the performance of parameter estimation is achieved owing to the fractional-order calculus theory. Compared with the conventional multi-innovation stochastic gradient algorithm, the proposed method is validated to obtain better estimation accuracy by the simulation results.

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Nonlinear systemScalar (mathematics)Identification (biology)PremiseComputer scienceSystem identificationMathematicsControl theory (sociology)AlgorithmMathematical optimizationControl (management)Artificial intelligenceData modelingGeometryBotanyPhysicsDatabaseQuantum mechanicsPhilosophyLinguisticsBiologyFault Detection and Control SystemsControl Systems and IdentificationAdvanced Algorithms and Applications
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