Model structure selection plays a key role in nonlinear system identification. The first step in nonlinear system identification is to determine which model terms should be included in the model. Once significant model terms have been determined, a model selection criterion can then be applied to select a suitable model subset. The well known orthogonal least squares type algorithms are one of the most efficient and commonly used techniques for model structure selection. However, it has been observed that the orthogonal least squares type algorithms may occasionally select incorrect model terms or yield a redundant model subset in the presence of particular noise structures or input signals. A very efficient integrated forward orthogonal se...
In non-linear system identification the set of non-linear modelsis very rich and the number of param...
System identification is a method of determining a mathematical relation between variables and terms...
A new algorithm which preselects variables in nonlinear system models is introduced by converting t...
Model structure selection plays a key role in non-linear system identification. The first step in no...
A new adaptive orthogonal search (AOS) algorithm is proposed for model subset selection and non-line...
A sparse representation, with satisfactory approximation accuracy, is usually desirable in any nonl...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
An alternative solution to the model structure selection problem is introduced by conducting a forwa...
Abstract—In this correspondence new robust nonlinear model con-struction algorithms for a large clas...
In model identification, the existence of uncertainty normally generates negative impact on the accu...
In this correspondence new robust nonlinear model construction algorithms for a large class of linea...
System identification is a field of study involving the derivation of a mathematical model to explai...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
This study considers the identification problem for a class of nonlinear parameter-varying systems a...
A new ultra-least squares (ULS) criterion is introduced for system identification. Unlike the standa...
In non-linear system identification the set of non-linear modelsis very rich and the number of param...
System identification is a method of determining a mathematical relation between variables and terms...
A new algorithm which preselects variables in nonlinear system models is introduced by converting t...
Model structure selection plays a key role in non-linear system identification. The first step in no...
A new adaptive orthogonal search (AOS) algorithm is proposed for model subset selection and non-line...
A sparse representation, with satisfactory approximation accuracy, is usually desirable in any nonl...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
An alternative solution to the model structure selection problem is introduced by conducting a forwa...
Abstract—In this correspondence new robust nonlinear model con-struction algorithms for a large clas...
In model identification, the existence of uncertainty normally generates negative impact on the accu...
In this correspondence new robust nonlinear model construction algorithms for a large class of linea...
System identification is a field of study involving the derivation of a mathematical model to explai...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
This study considers the identification problem for a class of nonlinear parameter-varying systems a...
A new ultra-least squares (ULS) criterion is introduced for system identification. Unlike the standa...
In non-linear system identification the set of non-linear modelsis very rich and the number of param...
System identification is a method of determining a mathematical relation between variables and terms...
A new algorithm which preselects variables in nonlinear system models is introduced by converting t...