This study presents two auxiliary variable-based identification algorithms for uncertain-input models. The auxiliary variable-based least squares algorithm can obtain unbiased parameter estimates by introducing suitable auxiliary variable vectors. Furthermore, an auxiliary variable-based recursive least squares algorithm is proposed to reduce the computational efforts. To validate the framework and algorithms developed, it has conducted a series of bench tests with computational experiments. The simulated numerical results/plots are consistent with the analytically derived results in terms of the feasibility and effectiveness of the proposed procedure
Abstract: In this paper the instrumental variable and recursive least square algorithm for identific...
In this paper a modified identification algorithm for linear systems with noisy input-output data is...
This work deals with the identification of errors-in-variables models corrupted by white and uncorre...
This study presents two auxiliary variable-based identification algorithms for uncertain-input model...
This paper focuses on the recursive identification problems for a multivariate output-error system. ...
We present a new class of models, called uncertain-input models, that allows us to treat system-iden...
In this paper, estimation and identification theories will be examined with the goal of determining ...
This paper addresses the problem of parameter estimation of noisy input-output models, where the mea...
Many classical problems in system identification, such as the classical predictionerror method and r...
This paper discusses the parameter estimation problems of multi-input output-error autoregressive (O...
Abstract. Application of least squares and instrumental variables to recovering parameters of nonlin...
The augmented UD identification (AUDI) is a family of new identification algorithms that are based o...
The problem of identifying dynamic errors-in-variables models is of fundamental interest in many are...
The field of identification and process-parameter estimation has developed rapidly during the past d...
We study the problem of system identification for the errors-in-variables (EIV) model, based on nois...
Abstract: In this paper the instrumental variable and recursive least square algorithm for identific...
In this paper a modified identification algorithm for linear systems with noisy input-output data is...
This work deals with the identification of errors-in-variables models corrupted by white and uncorre...
This study presents two auxiliary variable-based identification algorithms for uncertain-input model...
This paper focuses on the recursive identification problems for a multivariate output-error system. ...
We present a new class of models, called uncertain-input models, that allows us to treat system-iden...
In this paper, estimation and identification theories will be examined with the goal of determining ...
This paper addresses the problem of parameter estimation of noisy input-output models, where the mea...
Many classical problems in system identification, such as the classical predictionerror method and r...
This paper discusses the parameter estimation problems of multi-input output-error autoregressive (O...
Abstract. Application of least squares and instrumental variables to recovering parameters of nonlin...
The augmented UD identification (AUDI) is a family of new identification algorithms that are based o...
The problem of identifying dynamic errors-in-variables models is of fundamental interest in many are...
The field of identification and process-parameter estimation has developed rapidly during the past d...
We study the problem of system identification for the errors-in-variables (EIV) model, based on nois...
Abstract: In this paper the instrumental variable and recursive least square algorithm for identific...
In this paper a modified identification algorithm for linear systems with noisy input-output data is...
This work deals with the identification of errors-in-variables models corrupted by white and uncorre...