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Recursive coupled projection algorithms for multivariable output‐error‐like systems with coloured noises

Jian Pan, Hao Ma, Xiao Zhang, Qinyao Liu, Feng Ding, Yufang Chang, Jie Sheng

2020IET Signal Processing178 citationsDOI

Abstract

By combining the coupling identification concept with the gradient search, this study develops a partially coupled generalised extended projection algorithm and a partially coupled generalised extended stochastic gradient algorithm to estimate the parameters of a multivariable output‐error‐like system with autoregressive moving average noise from input–output data. The key is to divide the identification model into several submodels based on the hierarchical identification principle and to establish the parameter estimation algorithm by using the coupled relationship between these submodels. The simulation test results indicate that the proposed algorithms are effective.

Topics & Concepts

Multivariable calculusAlgorithmAutoregressive modelProjection (relational algebra)Identification (biology)Noise (video)System identificationAutoregressive–moving-average modelComputer scienceKey (lock)Estimation theoryCoupling (piping)MathematicsArtificial intelligenceData modelingStatisticsComputer securityImage (mathematics)BiologyEngineeringMechanical engineeringDatabaseBotanyControl engineeringControl Systems and IdentificationTarget Tracking and Data Fusion in Sensor NetworksStructural Health Monitoring Techniques
Recursive coupled projection algorithms for multivariable output‐error‐like systems with coloured noises | Litcius