Accurate regional wind power prediction plays an important role in the security and reliability of power systems. For the performance improvement of very short-term prediction intervals (PIs), a novel probabilistic prediction method based on composite conditional nonlinear quantile regression (CCNQR) is proposed. First, the hierarchical clustering method based on weighted multivariate time series motifs (WMTSM) is studied to consider the static difference, dynamic difference, and meteorological difference of wind power time series. Then, the correlations are used as sample weights for the conditional linear programming (CLP) of CCNQR. To optimize the performance of PIs, a composite evaluation including the accuracy of PI coverage probabilit...
Wind power probabilistic forecast is a key input in decision-making problems under risk, such as st...
Interval forecast is an efficient method to quantify the uncertainties in renewable energy productio...
The time series of wind power is influenced by many external factors, showing strong volatility and ...
Accurate regional wind power prediction plays an important role in the security and reliability of p...
The short-term probabilistic prediction of wind power has the characteristics of spatial dependence ...
With the increasing penetration of wind power into modern power systems, accurate forecast models pl...
The intermittency and uncertainty of wind power result in challenges for large-scale wind power inte...
The quantification of wind speed uncertainty is of great significance for real-time control of wind ...
Dispatching energy in transmission and distribution networks and bidding on electricity markets requ...
Wind power prediction is important for the smart grid safe operation and scheduling, and it can impr...
This paper makes use of the idea of prediction intervals (PIs) to capture the uncertainty associated...
Prediction intervals (PIs) are a promising tool for quantification of uncertainties associated with ...
Quantification of uncertainties associated with wind power generation forecasts is essential for opt...
To face the growing electricity demand, several countries have adopted the solution of clean energy ...
The efficient management of wind farms and electricity systems benefit greatly from accurate wind po...
Wind power probabilistic forecast is a key input in decision-making problems under risk, such as st...
Interval forecast is an efficient method to quantify the uncertainties in renewable energy productio...
The time series of wind power is influenced by many external factors, showing strong volatility and ...
Accurate regional wind power prediction plays an important role in the security and reliability of p...
The short-term probabilistic prediction of wind power has the characteristics of spatial dependence ...
With the increasing penetration of wind power into modern power systems, accurate forecast models pl...
The intermittency and uncertainty of wind power result in challenges for large-scale wind power inte...
The quantification of wind speed uncertainty is of great significance for real-time control of wind ...
Dispatching energy in transmission and distribution networks and bidding on electricity markets requ...
Wind power prediction is important for the smart grid safe operation and scheduling, and it can impr...
This paper makes use of the idea of prediction intervals (PIs) to capture the uncertainty associated...
Prediction intervals (PIs) are a promising tool for quantification of uncertainties associated with ...
Quantification of uncertainties associated with wind power generation forecasts is essential for opt...
To face the growing electricity demand, several countries have adopted the solution of clean energy ...
The efficient management of wind farms and electricity systems benefit greatly from accurate wind po...
Wind power probabilistic forecast is a key input in decision-making problems under risk, such as st...
Interval forecast is an efficient method to quantify the uncertainties in renewable energy productio...
The time series of wind power is influenced by many external factors, showing strong volatility and ...