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Filtered multi‐innovation‐based iterative identification methods for multivariate equation‐error ARMA systems

Shunyuan Sun, Ling Xu, Feng Ding, Jie Sheng

2023International Journal of Adaptive Control and Signal Processing69 citationsDOI

Abstract

Summary This paper focuses on the parameter estimation issues of multivariate equation‐error autoregressive moving average systems. By applying the gradient search and the multi‐innovation theory, we derive a multi‐innovation gradient based iterative (MI‐GI) algorithm. In order to improve the computational efficiency and the parameter estimation accuracy, a filtering and decomposition based gradient iterative (F‐D‐GI) algorithm is presented by using the data filtering technique and the decomposition technique. The key is to choose an appropriate filter to filter the input‐output data and to transform an original system into several subsystems. Compared with the MI‐GI algorithm, the F‐D‐GI algorithm can generate more accurate parameter estimates. Finally, an illustrative example is provided to indicate the effectiveness of the proposed algorithms.

Topics & Concepts

Autoregressive modelMultivariate statisticsAlgorithmFilter (signal processing)Estimation theoryAutoregressive–moving-average modelIterative methodKey (lock)Computer scienceIdentification (biology)DecompositionSystem identificationMathematical optimizationMathematicsStatisticsData miningBiologyComputer visionBotanyComputer securityEcologyMeasure (data warehouse)Control Systems and IdentificationStructural Health Monitoring TechniquesModel Reduction and Neural Networks
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