The Recursive Identification of Stochastic Linear Dynamical Systems Simulation Study

Section: Article
Published
Jun 25, 2025
Pages
31-54

Abstract

This Paper deals with the recursive identification problem of stochastic linear dynamical systems , Important Algorithms are explained in the identification system domains that are time-varying, and using a recursive Least Square method with a famous approach to estimate the model parameter, that a forgetting factor, and a Kalman filter approach with different values for a best linear dynamic models, that are identified from the two type of stochastic linear dynamic systems: that the equation error models which contain ARX models and ARMAX models. Output error models which consist of OE and Box-Jenkins models, that are reached by using the suggested instrument in Off-Line Identification, where the exact Linear models reached their parameter stable with Time, Moreover, the Statistic terms are verified from a point of random errors and insignificant cross-correlation between inputs and outputs residual.

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-, .-., ظافر, & هيام. (2025). The Recursive Identification of Stochastic Linear Dynamical Systems Simulation Study. IRAQI JOURNAL OF STATISTICAL SCIENCES, 11(1), 31–54. Retrieved from https://rjps.uomosul.edu.iq/index.php/stats/article/view/20611