Abstract- This paper presents a new algorithm that combines perturbation theory and genetic programming for modeling and forecasting real-world chaotic time series. Both perturbation theory and time series modeling have to build symbolic models for very complex system dynamics. Perturbation theory does not work without well-defined system equation. Difficulties in modeling time series lie in the fact that we can’t have or assume any system equation. The new algorithm shows how genetic programming can be combined with perturbation theory for time series modeling. Detailed discussions on successful applications to chaotic time series from practically important fields of science and engineering are given. Computational resources were negligibl...
To solve chaotic time series prediction problem, a novel Prediction approach for chaotic time series...
International audienceGenetic algorithms are known to be convergent algorithms, with final populatio...
This chapter deals with chaotic systems. Based on the characterization of deterministic chaos, unive...
AbstractThe prediction of future values of a time series generated by a chaotic dynamic system is an...
Abstract. Nowadays, prediction of runoff is very important in water resources management and their p...
Finding patterns such as increasing or decreasing trends, abrupt changes and periodically repeating ...
In this paper, the time series forecasting problem is approached by using a specific procedure to se...
In this paper we discuss alternative tool for symbolic regression so called Analytical programming a...
Genetic programming (or GP) is a random search technique that emerged in the late 1980s and early 19...
In this work, the nonlinear polynomial autoregressive (PAR) system has been applied to predict chaot...
Abstract: This paper presents the use of artificial intelligence and more specifically artificial ne...
Genetic programming (GP) uses the Darwinian principle of survival of the fittest and sexual recombin...
Abstract:- In order to cast off the subjective assumptions of traditional methods for modeling, this...
Genetic Algorithms (GAS) have been successfully used in many scientific and engineering problems but...
Chaos theory is integrated with Multi-Gene Genetic Programming (MGGP) engine as a new hybrid model f...
To solve chaotic time series prediction problem, a novel Prediction approach for chaotic time series...
International audienceGenetic algorithms are known to be convergent algorithms, with final populatio...
This chapter deals with chaotic systems. Based on the characterization of deterministic chaos, unive...
AbstractThe prediction of future values of a time series generated by a chaotic dynamic system is an...
Abstract. Nowadays, prediction of runoff is very important in water resources management and their p...
Finding patterns such as increasing or decreasing trends, abrupt changes and periodically repeating ...
In this paper, the time series forecasting problem is approached by using a specific procedure to se...
In this paper we discuss alternative tool for symbolic regression so called Analytical programming a...
Genetic programming (or GP) is a random search technique that emerged in the late 1980s and early 19...
In this work, the nonlinear polynomial autoregressive (PAR) system has been applied to predict chaot...
Abstract: This paper presents the use of artificial intelligence and more specifically artificial ne...
Genetic programming (GP) uses the Darwinian principle of survival of the fittest and sexual recombin...
Abstract:- In order to cast off the subjective assumptions of traditional methods for modeling, this...
Genetic Algorithms (GAS) have been successfully used in many scientific and engineering problems but...
Chaos theory is integrated with Multi-Gene Genetic Programming (MGGP) engine as a new hybrid model f...
To solve chaotic time series prediction problem, a novel Prediction approach for chaotic time series...
International audienceGenetic algorithms are known to be convergent algorithms, with final populatio...
This chapter deals with chaotic systems. Based on the characterization of deterministic chaos, unive...