The total least squares (TLS) technique has been extensively used for the identification of dynamic systems when both the inputs and outputs are corrupted with noise. But the major limitation of this technique has been the difficulty in identifying the actual parameters when the collinearity in the input data leads to several "small" eigenvalues. This paper proposes a novel technique namely augmented principal component analysis (APCA) to deal with collinearity problems in the error-in-variable formulation. The APCA formulation can also be used to determine the least squares prediction error when an appropriate operator is chosen. This property has been used for the nonlinear structure selection through forward selection methodology. The ef...
The problem of identification of systems in dynamic networks is considered. Although the prediction ...
Symmetrical behaviour of the covariance matrix and the positive-definite criterion are used to simpl...
A novel partitioned least squares (PLS) algorithm is presented, in which estimates from several simp...
The total least-squares technique has been extensively used for the identification of dynamic system...
Summary form only given as follows. In this paper the term system identification addresses the proce...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
In non-linear system identification the set of non-linear modelsis very rich and the number of param...
The augmented UD identification (AUDI) is a family of new identification algorithms that are based o...
This paper considers the applications of principal component analysis (PCA) for signal-based linear ...
The purpose of system identification is to build mathematical models for dynamical systems from expe...
Multivariate identification problems are treated with a least-squares approach. A chapter on scalar ...
System identification based on the errors-in-variables (EIV) system model has been investigated by a...
Simultaneous evaluation of the whole set of the model parameters of different orders together with a...
Model structure selection plays a key role in non-linear system identification. The first step in no...
O presente texto tem por objetivo avaliar diferentes aplicações do algoritmo PLS-PH (Parti...
The problem of identification of systems in dynamic networks is considered. Although the prediction ...
Symmetrical behaviour of the covariance matrix and the positive-definite criterion are used to simpl...
A novel partitioned least squares (PLS) algorithm is presented, in which estimates from several simp...
The total least-squares technique has been extensively used for the identification of dynamic system...
Summary form only given as follows. In this paper the term system identification addresses the proce...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
In non-linear system identification the set of non-linear modelsis very rich and the number of param...
The augmented UD identification (AUDI) is a family of new identification algorithms that are based o...
This paper considers the applications of principal component analysis (PCA) for signal-based linear ...
The purpose of system identification is to build mathematical models for dynamical systems from expe...
Multivariate identification problems are treated with a least-squares approach. A chapter on scalar ...
System identification based on the errors-in-variables (EIV) system model has been investigated by a...
Simultaneous evaluation of the whole set of the model parameters of different orders together with a...
Model structure selection plays a key role in non-linear system identification. The first step in no...
O presente texto tem por objetivo avaliar diferentes aplicações do algoritmo PLS-PH (Parti...
The problem of identification of systems in dynamic networks is considered. Although the prediction ...
Symmetrical behaviour of the covariance matrix and the positive-definite criterion are used to simpl...
A novel partitioned least squares (PLS) algorithm is presented, in which estimates from several simp...