Intermittency and uncertainty pose great challenges to the large-scale integration of wind power, so research on the probabilistic interval forecasting of wind power is becoming more and more important for power system planning and operation. In this paper, a Naive Bayesian wind power prediction interval model, combining rough set (RS) theory and particle swarm optimization (PSO), is proposed to further improve wind power prediction performance. First, in the designed prediction interval model, the input variables are identified based on attribute significance using rough set theory. Next, the Naive Bayesian Classifier (NBC) is established to obtain the prediction power class. Finally, the upper and lower output weights of NBC are optimized...
Renewable-power-generating resources can provide unlimited clean energy and emit at most minute amou...
The intermittency of renewable energy will increase the uncertainty of the power system, so it is ne...
National Natural Science Foundation of China; Brunel University London BRIEF Funding; Education Depa...
The intermittency and uncertainty of wind power result in challenges for large-scale wind power inte...
Numerous studies on wind power forecasting show that random errors found in the prediction results c...
With the increasing penetration of wind power into modern power systems, accurate forecast models pl...
The intermittence and uncertainty of wind power pose challenges to large-scale wind power grid integ...
The intermittence and uncertainty of wind power pose challenges to large-scale wind power grid integ...
Probabilistic interval prediction can be used to quantitatively analyse the uncertainty of wind ener...
Interval forecast is an efficient method to quantify the uncertainties in renewable energy productio...
As the proportion of wind power in the world’s electricity generation increases, improving wi...
© 2017 Elsevier Ltd Wind energy is attracting more attention with the growing demand for energy. How...
Wind energy has an increasing influence on the energy supply in many countries, but in contrast to c...
Accurate and reliable forecast of wind power is essential to power system operation and control. How...
Despite the great significance of precisely forecasting the wind speed for development of the new an...
Renewable-power-generating resources can provide unlimited clean energy and emit at most minute amou...
The intermittency of renewable energy will increase the uncertainty of the power system, so it is ne...
National Natural Science Foundation of China; Brunel University London BRIEF Funding; Education Depa...
The intermittency and uncertainty of wind power result in challenges for large-scale wind power inte...
Numerous studies on wind power forecasting show that random errors found in the prediction results c...
With the increasing penetration of wind power into modern power systems, accurate forecast models pl...
The intermittence and uncertainty of wind power pose challenges to large-scale wind power grid integ...
The intermittence and uncertainty of wind power pose challenges to large-scale wind power grid integ...
Probabilistic interval prediction can be used to quantitatively analyse the uncertainty of wind ener...
Interval forecast is an efficient method to quantify the uncertainties in renewable energy productio...
As the proportion of wind power in the world’s electricity generation increases, improving wi...
© 2017 Elsevier Ltd Wind energy is attracting more attention with the growing demand for energy. How...
Wind energy has an increasing influence on the energy supply in many countries, but in contrast to c...
Accurate and reliable forecast of wind power is essential to power system operation and control. How...
Despite the great significance of precisely forecasting the wind speed for development of the new an...
Renewable-power-generating resources can provide unlimited clean energy and emit at most minute amou...
The intermittency of renewable energy will increase the uncertainty of the power system, so it is ne...
National Natural Science Foundation of China; Brunel University London BRIEF Funding; Education Depa...