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Auxiliary Model Hierarchical Iterative Parameter Estimation for Autoregressive Output‐Error Models

Feng Ding, Hao Fang, Ling Xu

2026International Journal of Adaptive Control and Signal Processing6 citationsDOI

Abstract

ABSTRACT By means of the auxiliary model identification idea and the multi‐innovation identification theory, this paper investigates iterative parameter identification methods for autoregressive output‐error models, and proposed an auxiliary model (hierarchical) gradient‐based iterative (GI) algorithm, an auxiliary model (hierarchical) least‐squares‐based iterative (LSI) algorithm, an auxiliary model (hierarchical) multi‐innovation GI algorithm, an auxiliary model (hierarchical) multi‐innovation LSI algorithm by using the hierarchical identification principle. The proposed hierarchical iterative identification methods can be extended to other linear and nonlinear scalar and multivariable stochastic systems with colored noises.

Topics & Concepts

Autoregressive modelIdentification (biology)Iterative methodEstimation theorySystem identificationComputer scienceScalar (mathematics)AlgorithmMathematicsNonlinear systemMultivariable calculusLinear modelParameter identification problemSTAR modelModel parameterMathematical optimizationAutoregressive–moving-average modelLinear systemControl theory (sociology)Nonlinear autoregressive exogenous modelStatistical modelSequential estimationErrors-in-variables modelsHierarchical database modelControl Systems and IdentificationStructural Health Monitoring TechniquesAdvanced Adaptive Filtering Techniques
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