A new algorithm which preselects variables in nonlinear system models is introduced by converting the problem into a variable selection procedure for a set of linearised models. Based on this result an algorithm which consists of a cluster analysis linearisation sub-region division procedure, a linear subset selection routine usin an all possible regression algorithm and a genetic algorithm is developed. This algorithm can be applied to the modelling of nonlinear systems using a wide class of model forms including the nonlinear polynomial model, the nonlinear rational model, artificial neural networks and others. Numerical simulations are included to demonstrate the efficiency of the new algorithm
In many modeling problems that are based on input–output data, information about a plethora of varia...
Abstract. A real-world system has often plenty of variables that affect its behaviour. To be able to...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
Applying nonparametric variable selection criteria in nonlinear regression models generally requires...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
In the general method analysis applied to any nonlinear system depends to a large extent on the stru...
A method for identifying the structure of non-linear polynomial dynamic models is presented. This ap...
A new nonlinear rational model identification algorithm is introduced based on genetic algorithms. ...
An alternative solution to the model structure selection problem is introduced by conducting a forwa...
Linear in parameter models are quite widespread in process engineering, e.g. NAARX, polynomial ARMA ...
A model is usually only an approximation of underlying reality. To access this reality in an adequat...
Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
A new regularised least squares estimation algorithm is derived for the estimation of nonlinear dyna...
© 2012 Springer-Verlag London Limited.Our strategy for automatic selection in potentially non-linear...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
In many modeling problems that are based on input–output data, information about a plethora of varia...
Abstract. A real-world system has often plenty of variables that affect its behaviour. To be able to...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
Applying nonparametric variable selection criteria in nonlinear regression models generally requires...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
In the general method analysis applied to any nonlinear system depends to a large extent on the stru...
A method for identifying the structure of non-linear polynomial dynamic models is presented. This ap...
A new nonlinear rational model identification algorithm is introduced based on genetic algorithms. ...
An alternative solution to the model structure selection problem is introduced by conducting a forwa...
Linear in parameter models are quite widespread in process engineering, e.g. NAARX, polynomial ARMA ...
A model is usually only an approximation of underlying reality. To access this reality in an adequat...
Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
A new regularised least squares estimation algorithm is derived for the estimation of nonlinear dyna...
© 2012 Springer-Verlag London Limited.Our strategy for automatic selection in potentially non-linear...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
In many modeling problems that are based on input–output data, information about a plethora of varia...
Abstract. A real-world system has often plenty of variables that affect its behaviour. To be able to...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...