Chaotic time series have been involved in many fields of production and life, so their prediction has a very important practical value. However, due to the characteristics of chaotic time series, such as internal randomness, nonlinearity, and long-term unpredictability, most prediction methods cannot achieve high-precision intermediate or long-term predictions. Thus, an intermediate and long-term prediction (ILTP) method for n-dimensional chaotic time series is proposed to solve this problem. Initially, the order of the model is determined by optimizing the preprocessing and constructing the joint calculation strategy, so that the observation sequence can be decomposed and reorganized accurately. Furthermore, the RBF neural network is intro...
Multi-step-ahead time series prediction has been one of the greatest challenges for machine learning...
Typically, time series forecasting is done by using models based directly on the past observations f...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
A unique technique based on chaos theory and artificial neural networks (ANN) is developed to analys...
This paper demonstrates the development of an Long-Short Term Memory (LSTM) network and its applicat...
Chaotic dynamics are the paradigm of complex and unpredictable evolution due to their built-in featu...
Traditional statistical, physical, and correlation models for chaotic time series prediction have pr...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
A self-constructing fuzzy neural network (SCFNN) has been successfully used for chaotic time series ...
Abstract Aiming to solve the problems of low accuracy of multi-step prediction and difficulty in de...
Aiming to solve the problems of low accuracy of multi-step prediction and difficulty in determining ...
A new methodology, which combines nonparametric method based on local functional coefficient autoreg...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
This paper introduces several novel strategies for multi-step-ahead prediction of chaotic time serie...
The prediction of chaotic dynamical systems’ future evolution is widely debated and represents a hot...
Multi-step-ahead time series prediction has been one of the greatest challenges for machine learning...
Typically, time series forecasting is done by using models based directly on the past observations f...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
A unique technique based on chaos theory and artificial neural networks (ANN) is developed to analys...
This paper demonstrates the development of an Long-Short Term Memory (LSTM) network and its applicat...
Chaotic dynamics are the paradigm of complex and unpredictable evolution due to their built-in featu...
Traditional statistical, physical, and correlation models for chaotic time series prediction have pr...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
A self-constructing fuzzy neural network (SCFNN) has been successfully used for chaotic time series ...
Abstract Aiming to solve the problems of low accuracy of multi-step prediction and difficulty in de...
Aiming to solve the problems of low accuracy of multi-step prediction and difficulty in determining ...
A new methodology, which combines nonparametric method based on local functional coefficient autoreg...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
This paper introduces several novel strategies for multi-step-ahead prediction of chaotic time serie...
The prediction of chaotic dynamical systems’ future evolution is widely debated and represents a hot...
Multi-step-ahead time series prediction has been one of the greatest challenges for machine learning...
Typically, time series forecasting is done by using models based directly on the past observations f...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...