Litcius/Paper detail

Three‐stage multi‐innovation parameter estimation for an exponential autoregressive time‐series model with moving average noise by using the data filtering technique

Huan Xu, Feng Ding, Erfu Yang

2020International Journal of Robust and Nonlinear Control20 citationsDOI

Abstract

Summary This paper studies the data filtering‐based identification algorithms for an exponential autoregressive time‐series model with moving average noise. By means of the data filtering technique and the hierarchical identification principle, the identification model is transformed into three sub‐identification (Sub‐ID) models, and a filtering‐based three‐stage extended stochastic gradient algorithm is derived for identifying these Sub‐ID models. In order to improve the parameter estimation accuracy, a filtering‐based three‐stage multi‐innovation extended stochastic gradient (F‐3S‐MIESG) algorithm is developed by using the multi‐innovation identification theory. The simulation results indicate that the proposed F‐3S‐MIESG algorithm can work well.

Topics & Concepts

Autoregressive modelIdentification (biology)Autoregressive–moving-average modelSeries (stratigraphy)Noise (video)Moving averageExponential functionComputer scienceEstimation theoryTime seriesAlgorithmSTAR modelSystem identificationMathematicsAutoregressive integrated moving averageArtificial intelligenceData modelingStatisticsMachine learningPaleontologyDatabaseBiologyImage (mathematics)Mathematical analysisBotanyControl Systems and IdentificationNeural Networks and ApplicationsFault Detection and Control Systems