\u3cp\u3eState-of-the-art methods for data-driven modelling of non-linear dynamical systems typically involve interactions with an expert user. In order to partially automate the process of modelling physical systems from data, many EA-based approaches have been proposed for model-structure selection, with special focus on non-linear systems. Recently, an approach for data-driven modelling of non-linear dynamical systems using Genetic Programming (GP) was proposed. The novelty of the method was the modelling of noise and the use of Tree Adjoining Grammar to shape the search-space explored by GP. In this paper, we report results achieved by the proposed method on three case studies. Each of the case studies considered here is based on real p...
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...
In recent years, extensive works on genetic algorithms have been reported covering various applicati...
State-of-the-art methods for data-driven modelling of non-linear dynamical systems typically involve...
This book describes a user-friendly, evolutionary algorithms-based framework for estimating data-dri...
\u3cp\u3eIn this paper we propose a novel approach to identify dynamical systems. The method estimat...
A method for identifying the structure of non-linear polynomial dynamic models is presented. This ap...
In order to use existing identification tools effectively, a user must make critical choices a prior...
Data-driven modeling of nonlinear dynamical systems often requires an expert user to take critical d...
This paper points out how combined Genetic Programming techniques can be applied to the identificati...
Model structure and complexity selection remains a challenging problem in system identification, esp...
Abstract. This paper introduces a Multi-Branch Genetic Programming (MB-GP) encoding applied for mode...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
Linear in parameter models are quite widespread in process engineering, e.g. NAARX, polynomial ARMA ...
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...
In recent years, extensive works on genetic algorithms have been reported covering various applicati...
State-of-the-art methods for data-driven modelling of non-linear dynamical systems typically involve...
This book describes a user-friendly, evolutionary algorithms-based framework for estimating data-dri...
\u3cp\u3eIn this paper we propose a novel approach to identify dynamical systems. The method estimat...
A method for identifying the structure of non-linear polynomial dynamic models is presented. This ap...
In order to use existing identification tools effectively, a user must make critical choices a prior...
Data-driven modeling of nonlinear dynamical systems often requires an expert user to take critical d...
This paper points out how combined Genetic Programming techniques can be applied to the identificati...
Model structure and complexity selection remains a challenging problem in system identification, esp...
Abstract. This paper introduces a Multi-Branch Genetic Programming (MB-GP) encoding applied for mode...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
Linear in parameter models are quite widespread in process engineering, e.g. NAARX, polynomial ARMA ...
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...
In recent years, extensive works on genetic algorithms have been reported covering various applicati...