This paper proposes a procedural pipeline for wind forecasting based on clustering and regression. First, the data are clustered into groups sharing similar dynamic properties. Then, data in the same cluster are used to train the neural network that predicts wind speed. For clustering, a hidden Markov model (HMM) and the modified Bayesian information criteria (BIC) are incorporated in a new method of clustering time series data. to forecast wind, a new method for wind time series data forecasting is developed based on the extreme learning machine (ELM). the clustering results improve the accuracy of the proposed method of wind forecasting. Experiments on a real dataset collected from various locations confirm the method\u27s accuracy and ca...
Wind energy has been widely used in recent decades to achieve green and sustainable development. How...
Precise predictions of wind power density play a substantial role in determining the viability of wi...
This paper deals with the problem of clustering daily wind speed time series based on two features ...
This paper deals with the clustering of daily wind speed time series based on two features, namely t...
The predictability of wind energy is crucial due to the uncertain and intermittent features of wind ...
A novel bidirectional mechanism and a backward forecasting model based on extreme learning machine (...
Since wind fluctuates with strong variation even within a short-term period, it is quite difficult t...
Renewable energy becomes progressively popular in the world because renewable resources such as sola...
Wind power represents a promising source of renewable energies. Precise forecasting of wind power ge...
The increasing liberalization of European electricity markets, the growing proportion of intermitten...
The increasing liberalization of European electricity markets, the growing proportion of intermitten...
Achieving relatively high-accuracy short-term wind speed forecasting estimates is a precondition for...
Wind energy is a core sustainable source of electric power, and accurate wind-speed forecasting is p...
With the rapid growth of wind power penetration into modern power grids, wind speed forecasting play...
Accurate and reliable forecast of wind power is essential to power system operation and control. How...
Wind energy has been widely used in recent decades to achieve green and sustainable development. How...
Precise predictions of wind power density play a substantial role in determining the viability of wi...
This paper deals with the problem of clustering daily wind speed time series based on two features ...
This paper deals with the clustering of daily wind speed time series based on two features, namely t...
The predictability of wind energy is crucial due to the uncertain and intermittent features of wind ...
A novel bidirectional mechanism and a backward forecasting model based on extreme learning machine (...
Since wind fluctuates with strong variation even within a short-term period, it is quite difficult t...
Renewable energy becomes progressively popular in the world because renewable resources such as sola...
Wind power represents a promising source of renewable energies. Precise forecasting of wind power ge...
The increasing liberalization of European electricity markets, the growing proportion of intermitten...
The increasing liberalization of European electricity markets, the growing proportion of intermitten...
Achieving relatively high-accuracy short-term wind speed forecasting estimates is a precondition for...
Wind energy is a core sustainable source of electric power, and accurate wind-speed forecasting is p...
With the rapid growth of wind power penetration into modern power grids, wind speed forecasting play...
Accurate and reliable forecast of wind power is essential to power system operation and control. How...
Wind energy has been widely used in recent decades to achieve green and sustainable development. How...
Precise predictions of wind power density play a substantial role in determining the viability of wi...
This paper deals with the problem of clustering daily wind speed time series based on two features ...