AbstractAccording to the hierarchical identification principle, a hierarchical gradient based iterative estimation algorithm is derived for multivariable output error moving average systems (i.e., multivariable OEMA-like models) which is different from multivariable CARMA-like models. As there exist unmeasurable noise-free outputs and unknown noise terms in the information vector/matrix of the corresponding identification model, this paper is, by means of the auxiliary model identification idea, to replace the unmeasurable variables in the information vector/matrix with the estimated residuals and the outputs of the auxiliary model. A numerical example is provided
It is well-known that mathematical models are the basis for system analysis and controller design. T...
This paper investigates parameter estimation problems for multivariable controlled autoregressive au...
This paper considers identification problems for a multivariable controlled autoregressive system wi...
AbstractAccording to the hierarchical identification principle, a hierarchical gradient based iterat...
This paper considers identification problems for a multivariable controlled autoregressive system wi...
This paper considers the identification problem of multi-input-output-error autoregressive systems. ...
This paper considers the parameter identification problems of the input nonlinear output-error (IN-O...
This paper considers the parameter identification problems of the input nonlinear output-error (IN-O...
AbstractThis paper presents a gradient-based iterative identification algorithms for Box–Jenkins sys...
System identification provides many convenient and useful methods for engineering modelling. This st...
This study presents the modelling technology of multivariable equation-error autoregressive moving a...
AbstractAn iterative least squares parameter estimation algorithm is developed for controlled moving...
The parameter estimation methods for the nonlinear exponential autoregressive (ExpAR) model are inve...
AbstractA two-stage least squares based iterative (two-stage LSI) identification algorithm is derive...
The parameter estimation methods for the nonlinear exponential autoregressive (ExpAR) model are inve...
It is well-known that mathematical models are the basis for system analysis and controller design. T...
This paper investigates parameter estimation problems for multivariable controlled autoregressive au...
This paper considers identification problems for a multivariable controlled autoregressive system wi...
AbstractAccording to the hierarchical identification principle, a hierarchical gradient based iterat...
This paper considers identification problems for a multivariable controlled autoregressive system wi...
This paper considers the identification problem of multi-input-output-error autoregressive systems. ...
This paper considers the parameter identification problems of the input nonlinear output-error (IN-O...
This paper considers the parameter identification problems of the input nonlinear output-error (IN-O...
AbstractThis paper presents a gradient-based iterative identification algorithms for Box–Jenkins sys...
System identification provides many convenient and useful methods for engineering modelling. This st...
This study presents the modelling technology of multivariable equation-error autoregressive moving a...
AbstractAn iterative least squares parameter estimation algorithm is developed for controlled moving...
The parameter estimation methods for the nonlinear exponential autoregressive (ExpAR) model are inve...
AbstractA two-stage least squares based iterative (two-stage LSI) identification algorithm is derive...
The parameter estimation methods for the nonlinear exponential autoregressive (ExpAR) model are inve...
It is well-known that mathematical models are the basis for system analysis and controller design. T...
This paper investigates parameter estimation problems for multivariable controlled autoregressive au...
This paper considers identification problems for a multivariable controlled autoregressive system wi...