Aiming to solve the problems of low accuracy of multi-step prediction and difficulty in determining the maximum number of prediction steps of chaotic time series, a multi-step time series prediction model based on the dilated convolution network and long short-term memory (LSTM), named the dilated convolution-long short-term memory (DC-LSTM), is proposed. The dilated convolution operation is used to extract the correlation between the predicted variable and correlational variables. The features extracted by dilated convolution operation and historical data of predicted variable are input into LSTM to obtain the desired multi-step prediction result. Furthermore, cross-correlation analyses (CCA) are applied to calculate the reasonable maximum...
Prediction models are used to prevent and prepare for corresponding events according to various type...
A new methodology, which combines nonparametric method based on local functional coefficient autoreg...
Recurrent neural networks (RNNs) used in time series prediction are still not perfect in their predi...
Abstract Aiming to solve the problems of low accuracy of multi-step prediction and difficulty in de...
This paper demonstrates the development of an Long-Short Term Memory (LSTM) network and its applicat...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
Chaotic time series have been involved in many fields of production and life, so their prediction ha...
Traditional statistical, physical, and correlation models for chaotic time series prediction have pr...
Machine learning methods, such as Long Short-Term Memory (LSTM) neural networks can predict real-lif...
Rotary kiln temperature forecasting plays a significant part of the automatic control of the sinteri...
Recurrent neurons (and in particular LSTM cells) demonstrated to be efficient when used as basic blo...
Deep learning models have been widely used in prediction problems in various scenarios and have show...
It has been a hot and challenging topic to predict the chaotic time series in the medium-to-long ter...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
Prediction models are used to prevent and prepare for corresponding events according to various type...
A new methodology, which combines nonparametric method based on local functional coefficient autoreg...
Recurrent neural networks (RNNs) used in time series prediction are still not perfect in their predi...
Abstract Aiming to solve the problems of low accuracy of multi-step prediction and difficulty in de...
This paper demonstrates the development of an Long-Short Term Memory (LSTM) network and its applicat...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
Chaotic time series have been involved in many fields of production and life, so their prediction ha...
Traditional statistical, physical, and correlation models for chaotic time series prediction have pr...
Machine learning methods, such as Long Short-Term Memory (LSTM) neural networks can predict real-lif...
Rotary kiln temperature forecasting plays a significant part of the automatic control of the sinteri...
Recurrent neurons (and in particular LSTM cells) demonstrated to be efficient when used as basic blo...
Deep learning models have been widely used in prediction problems in various scenarios and have show...
It has been a hot and challenging topic to predict the chaotic time series in the medium-to-long ter...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
Prediction models are used to prevent and prepare for corresponding events according to various type...
A new methodology, which combines nonparametric method based on local functional coefficient autoreg...
Recurrent neural networks (RNNs) used in time series prediction are still not perfect in their predi...