In this work, the nonlinear polynomial autoregressive (PAR) system has been applied to predict chaotic time series. For this purpose, different mathematical model structures based on nonlinear PAR time series have been presented to prediction of Mackey-Glass and Lorenz chaotic time series. As adaptive algorithms, Genetic algorithm (GA), differential evolution algorithm (DEA) and clonal selection algorithm (CSA) in heuristic algorithms, recursive least square algorithm (RLS) in classic algorithms have been used to determine the parameter values in the presented models and compared its performances. The simulation results have shown that both the presented mathematical models for chaotic systems and optimization works using the different algo...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
A unique technique based on chaos theory and artificial neural networks (ANN) is developed to analys...
The applicability of machine learning for predicting chaotic dynamics relies heavily upon the data u...
We apply the polynomial function to approximate the functional coefficients of the state-dependent a...
To solve chaotic time series prediction problem, a novel Prediction approach for chaotic time series...
In the scheme of reconstruction, non-polynomial predictors improve the forecast from chaotic time se...
A new methodology, which combines nonparametric method based on local functional coefficient autoreg...
AbstractTo improve the prediction accuracy of complex multivariate chaotic time series, a novel sche...
Abstract. Deterministic nonlinear prediction is a pow erful tec hnique for the anal-ysis and predict...
Chaotic time series have been involved in many fields of production and life, so their prediction ha...
Abstract- This paper presents a new algorithm that combines perturbation theory and genetic programm...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Abstract. Time-series prediction has been a very well researched topic in recent studies. Some popul...
Chaotic dynamics are the paradigm of complex and unpredictable evolution due to their built-in featu...
AbstractThe prediction of future values of a time series generated by a chaotic dynamic system is an...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
A unique technique based on chaos theory and artificial neural networks (ANN) is developed to analys...
The applicability of machine learning for predicting chaotic dynamics relies heavily upon the data u...
We apply the polynomial function to approximate the functional coefficients of the state-dependent a...
To solve chaotic time series prediction problem, a novel Prediction approach for chaotic time series...
In the scheme of reconstruction, non-polynomial predictors improve the forecast from chaotic time se...
A new methodology, which combines nonparametric method based on local functional coefficient autoreg...
AbstractTo improve the prediction accuracy of complex multivariate chaotic time series, a novel sche...
Abstract. Deterministic nonlinear prediction is a pow erful tec hnique for the anal-ysis and predict...
Chaotic time series have been involved in many fields of production and life, so their prediction ha...
Abstract- This paper presents a new algorithm that combines perturbation theory and genetic programm...
Limited literature regarding parameter estimation of dynamic systems has been identified as the cent...
Abstract. Time-series prediction has been a very well researched topic in recent studies. Some popul...
Chaotic dynamics are the paradigm of complex and unpredictable evolution due to their built-in featu...
AbstractThe prediction of future values of a time series generated by a chaotic dynamic system is an...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
A unique technique based on chaos theory and artificial neural networks (ANN) is developed to analys...
The applicability of machine learning for predicting chaotic dynamics relies heavily upon the data u...