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Overall recursive least squares and overall stochastic gradient algorithms and their convergence for feedback nonlinear controlled autoregressive systems

Chun Wei, Xiao Zhang, Ling Xu, Feng Ding, Erfu Yang

2022International Journal of Robust and Nonlinear Control83 citationsDOIOpen Access PDF

Abstract

Abstract This article deals with the problems of the parameter estimation for feedback nonlinear controlled autoregressive systems (i.e., feedback nonlinear equation‐error systems). The bilinear‐in‐parameter identification model is formulated to describe the feedback nonlinear system. An overall recursive least squares algorithm is developed to handle the difficulty of the bilinear‐in‐parameter. For the purpose of avoiding the heavy computational burden, an overall stochastic gradient algorithm is deduced and the forgetting factor is introduced to improve the convergence rate. Furthermore, the convergence analysis of the proposed algorithms are established by means of the stochastic process theory. The effectiveness of the proposed algorithms are illustrated by the simulation example.

Topics & Concepts

Autoregressive modelRecursive least squares filterNonlinear systemConvergence (economics)Bilinear interpolationEstimation theoryRate of convergenceIdentification (biology)AlgorithmLeast-squares function approximationStochastic approximationMathematicsSystem identificationComputer scienceControl theory (sociology)Mathematical optimizationControl (management)Adaptive filterStatisticsKey (lock)Artificial intelligenceData modelingComputer securityPhysicsEconomicsDatabaseQuantum mechanicsEconomic growthEstimatorBiologyBotanyControl Systems and IdentificationNeural Networks and ApplicationsFault Detection and Control Systems
Overall recursive least squares and overall stochastic gradient algorithms and their convergence for feedback nonlinear controlled autoregressive systems | Litcius