This book describes a user-friendly, evolutionary algorithms-based framework for estimating data-driven models for a wide class of dynamical systems, including linear and nonlinear ones. The methodology addresses the problem of automating the process of estimating data-driven models from a user’s perspective. By combining elementary building blocks, it learns the dynamic relations governing the system from data, giving model estimates with various trade-offs, e.g. between complexity and accuracy. The evaluation of the method on a set of academic, benchmark and real-word problems is reported in detail. Overall, the book offers a state-of-the-art review on the problem of nonlinear model estimation and automated model selection for dynamical s...
A modified versions of metaheuristic algorithms are presented to compare their performance in identi...
This paper introduces a new rationale for learning nonlinear dynamical systems. The method makes use...
The quantity of data available to scientists in all disciplines is increasing at an exponential rate...
\u3cp\u3eState-of-the-art methods for data-driven modelling of non-linear dynamical systems typicall...
In this paper we propose a novel approach to identify dynamical systems. The method estimates the mo...
The work presented here advances the technology to analyze experimental data and automatically hypot...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
The main important thing about modelling a system is to understand the behaviour and to aid in desig...
Two of the steps in system identification are model structure selection and parameter estimation. In...
This paper presents an investigation into the development of system identification using the artific...
In order to use existing identification tools effectively, a user must make critical choices a prior...
International audienceThe advance of machine learning technology allows one to obtain useful informa...
The paper summarizes some results of nonlinear system modelling and identification. Connectionswith ...
AbstractA new procedure to formulate nonlinear empirical models of a dynamical system is presented. ...
This monograph is an exposition of a novel method for solving inverse problems, a method of paramete...
A modified versions of metaheuristic algorithms are presented to compare their performance in identi...
This paper introduces a new rationale for learning nonlinear dynamical systems. The method makes use...
The quantity of data available to scientists in all disciplines is increasing at an exponential rate...
\u3cp\u3eState-of-the-art methods for data-driven modelling of non-linear dynamical systems typicall...
In this paper we propose a novel approach to identify dynamical systems. The method estimates the mo...
The work presented here advances the technology to analyze experimental data and automatically hypot...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
The main important thing about modelling a system is to understand the behaviour and to aid in desig...
Two of the steps in system identification are model structure selection and parameter estimation. In...
This paper presents an investigation into the development of system identification using the artific...
In order to use existing identification tools effectively, a user must make critical choices a prior...
International audienceThe advance of machine learning technology allows one to obtain useful informa...
The paper summarizes some results of nonlinear system modelling and identification. Connectionswith ...
AbstractA new procedure to formulate nonlinear empirical models of a dynamical system is presented. ...
This monograph is an exposition of a novel method for solving inverse problems, a method of paramete...
A modified versions of metaheuristic algorithms are presented to compare their performance in identi...
This paper introduces a new rationale for learning nonlinear dynamical systems. The method makes use...
The quantity of data available to scientists in all disciplines is increasing at an exponential rate...