Simultaneous evaluation of the whole set of the model parameters of different orders together with an ability to track unmodeled dynamics are desired features in the tasks of parameter estimation. A technique handling with the factors produced by an augmented covariance (ACM) or information (AIM) matrices is considered to be an appropriate tool for designing multiple model estimation. This is where the name augmented identification (AI) by using the least-squares method was taken. The method AI attains numerical stability of the calculation of the conventional least squares method while in the same time, fully extracts information contained in the observation. In order to track time varying parameters can be found that all the information p...
We present results about classes of prefilters that may result in similar model estimates by use of ...
This paper presents an example of solving the parameter identification problem in the case of a robo...
This study presents two auxiliary variable-based identification algorithms for uncertain-input model...
The augmented UD identification (AUDI) is a family of new identification algorithms that are based o...
19. KEY WORDS lCie • 4 n t#~e..,..Mae. if &#etasa•r • nd l•seoift by block nAubate multiple mode...
To identify time-varying matrix parameter partici pating in ARMAX-model description, a new recur siv...
The choice of a parametric model structure in empirical and semi-empirical non-linear modeling is us...
In this paper we present a review of some recent results for identification of linear dynamic system...
In state reconstruction problems, the statistics of the noise affecting the state equations is often...
This piece of work deals with a philosophy of design adaptive controller, which is based on knowledg...
The bias compensated least squares approach for errors-in-variables model identification is examined...
This paper proposes a three-stage procedure for parametric identification of piece wise affine auto ...
This paper defines a class of system information—affine information—that includes both the dynamic r...
This paper discusses the parameter estimation problems of multi-input output-error autoregressive (O...
In system identification, one usually cares most about finding a model whose outputs are as close as...
We present results about classes of prefilters that may result in similar model estimates by use of ...
This paper presents an example of solving the parameter identification problem in the case of a robo...
This study presents two auxiliary variable-based identification algorithms for uncertain-input model...
The augmented UD identification (AUDI) is a family of new identification algorithms that are based o...
19. KEY WORDS lCie • 4 n t#~e..,..Mae. if &#etasa•r • nd l•seoift by block nAubate multiple mode...
To identify time-varying matrix parameter partici pating in ARMAX-model description, a new recur siv...
The choice of a parametric model structure in empirical and semi-empirical non-linear modeling is us...
In this paper we present a review of some recent results for identification of linear dynamic system...
In state reconstruction problems, the statistics of the noise affecting the state equations is often...
This piece of work deals with a philosophy of design adaptive controller, which is based on knowledg...
The bias compensated least squares approach for errors-in-variables model identification is examined...
This paper proposes a three-stage procedure for parametric identification of piece wise affine auto ...
This paper defines a class of system information—affine information—that includes both the dynamic r...
This paper discusses the parameter estimation problems of multi-input output-error autoregressive (O...
In system identification, one usually cares most about finding a model whose outputs are as close as...
We present results about classes of prefilters that may result in similar model estimates by use of ...
This paper presents an example of solving the parameter identification problem in the case of a robo...
This study presents two auxiliary variable-based identification algorithms for uncertain-input model...