Genetic Programming (GP) is a powerful nonlinear optimisation tool which can be applied to the identification of the nonlinear structure of dynamic systems. Several issues must be considered. The model format must be defined and a simulation routine integrated with the GP optimisation code to evaluate each candidate model. Numerical parameters of the model must be identified and the model's "goodness-of-fit" must be quantified. The GP algorithm must be configured for model identification and optimised for computation time. Finally, general nonlinear modelling issues such as experimental design and model validation must be considered. All these issues are addressed in this paper
Genetic programming (GP) is applied to a multobjective optimisation problem and the advantages of ...
In recent years, extensive works on genetic algorithms have been reported covering various applicati...
In order to use existing identification tools effectively, a user must make critical choices a prior...
Genetic Programming (GP) is a powerful nonlinear optimisation tool which can be applied to the ident...
Genetic Programming is an optimisation procedure which may be applied to the identification of the n...
Genetic programming can be used for structural optimisation. Combined with a hybrid simplex/simulate...
This paper points out how combined Genetic Programming techniques can be applied to the identificati...
Linear in parameter models are quite widespread in process engineering, e.g. NAARX, polynomial ARMA ...
Abstract. This paper introduces a Multi-Branch Genetic Programming (MB-GP) encoding applied for mode...
A method for identifying the structure of non-linear polynomial dynamic models is presented. This ap...
The nonlinear systems identification method described in the paper is based on genetic programming, ...
The main important thing about modelling a system is to understand the behaviour and to aid in desig...
A new nonlinear rational model identification algorithm is introduced based on genetic algorithms. ...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
Abstract Macroscopic models are useful for example in process control and optimization. They are bas...
Genetic programming (GP) is applied to a multobjective optimisation problem and the advantages of ...
In recent years, extensive works on genetic algorithms have been reported covering various applicati...
In order to use existing identification tools effectively, a user must make critical choices a prior...
Genetic Programming (GP) is a powerful nonlinear optimisation tool which can be applied to the ident...
Genetic Programming is an optimisation procedure which may be applied to the identification of the n...
Genetic programming can be used for structural optimisation. Combined with a hybrid simplex/simulate...
This paper points out how combined Genetic Programming techniques can be applied to the identificati...
Linear in parameter models are quite widespread in process engineering, e.g. NAARX, polynomial ARMA ...
Abstract. This paper introduces a Multi-Branch Genetic Programming (MB-GP) encoding applied for mode...
A method for identifying the structure of non-linear polynomial dynamic models is presented. This ap...
The nonlinear systems identification method described in the paper is based on genetic programming, ...
The main important thing about modelling a system is to understand the behaviour and to aid in desig...
A new nonlinear rational model identification algorithm is introduced based on genetic algorithms. ...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
Abstract Macroscopic models are useful for example in process control and optimization. They are bas...
Genetic programming (GP) is applied to a multobjective optimisation problem and the advantages of ...
In recent years, extensive works on genetic algorithms have been reported covering various applicati...
In order to use existing identification tools effectively, a user must make critical choices a prior...