In this paper, we propose a High Order Neural Network (HONN) trained with an extended Kalman filter based algorithm to predict wind speed. Due to the chaotic behavior of the wind time series, it is not possible satisfactorily to apply the traditional forecasting techniques for time series; however, the results presented in this paper confirm that HONNs can very well capture the complexity underlying wind forecasting; this model produces accurate one-step ahead predictions. 2009 IEEE
This paper presents a method for the medium-long-term wind speed prediction based on spatiotemporal ...
Wind speed-time series data typically exhibit autocorrelation, which can be defined as the degree o...
25th Signal Processing and Communications Applications Conference, SIU 2017 -- 15 May 2017 through 1...
In this paper, we propose a High Order Neural Network (HONN) trained with an extended Kalman filter ...
In this paper, a Higher Order Wavelet Neural Network (HOWNN) trained with an Extended Kalman Filter ...
In this paper a time series prediction of wind speed with artificial neural networks is presented. ...
Predicting short term wind speed is essential in order to prevent systems in-action from the effects...
This paper deals with a novel training algorithm for a neural network architecture for wind speed ti...
Renewable energies such as wind power have become integral parts of modern power networks. Short-ter...
Wind speed forecasting is very important to the operation of wind power plants and power systems. Be...
One of the ways of reducing the effects of Climate Change is to rely on renewable energy sources. Th...
Deep Learning Convolutional Neural Networks have been successfully used in many applications. Its ve...
This chapter presents the design of a neural network that combines higher order terms in its input l...
This paper presents the experimental results and analysis of artificial neural network (ANN) models ...
To efficiently manage unstable wind power generation, precise short-term wind speed forecasting is c...
This paper presents a method for the medium-long-term wind speed prediction based on spatiotemporal ...
Wind speed-time series data typically exhibit autocorrelation, which can be defined as the degree o...
25th Signal Processing and Communications Applications Conference, SIU 2017 -- 15 May 2017 through 1...
In this paper, we propose a High Order Neural Network (HONN) trained with an extended Kalman filter ...
In this paper, a Higher Order Wavelet Neural Network (HOWNN) trained with an Extended Kalman Filter ...
In this paper a time series prediction of wind speed with artificial neural networks is presented. ...
Predicting short term wind speed is essential in order to prevent systems in-action from the effects...
This paper deals with a novel training algorithm for a neural network architecture for wind speed ti...
Renewable energies such as wind power have become integral parts of modern power networks. Short-ter...
Wind speed forecasting is very important to the operation of wind power plants and power systems. Be...
One of the ways of reducing the effects of Climate Change is to rely on renewable energy sources. Th...
Deep Learning Convolutional Neural Networks have been successfully used in many applications. Its ve...
This chapter presents the design of a neural network that combines higher order terms in its input l...
This paper presents the experimental results and analysis of artificial neural network (ANN) models ...
To efficiently manage unstable wind power generation, precise short-term wind speed forecasting is c...
This paper presents a method for the medium-long-term wind speed prediction based on spatiotemporal ...
Wind speed-time series data typically exhibit autocorrelation, which can be defined as the degree o...
25th Signal Processing and Communications Applications Conference, SIU 2017 -- 15 May 2017 through 1...