Scenario forecasting methods have been widely studied in recent years to cope with the wind power uncertainty problem. The main difficulty of this problem is to accurately and comprehensively reflect the time-series characteristics and spatial-temporal correlation of wind power generation. In this paper, the marginal distribution model and the dependence structure are combined to describe these complex characteristics. On this basis, a scenario generation method for multiple wind farms is proposed. For the marginal distribution model, the autoregressive integrated moving average-generalized autoregressive conditional heteroskedasticity-t (ARIMA-GARCH-t) model is proposed to capture the time-series characteristics of wind power generation. F...
The aim of this study is to identify a class of models appropriate to describe the wind power produc...
Abstract The impacts of outlying shocks on wind power time series are explored by considering the ou...
In future power systems, a large share of the energy will be generated with wind power plants (WPPs)...
This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivari...
Medium- and long-term wind power output time series are required in stochastic programming model for...
Short-term (up to 2-3 days ahead) probabilistic forecasts of wind power provide forecast users with ...
Short-term (up to 2-3 days ahead) probabilistic forecasts of wind power provide forecast users with ...
The share of wind energy in total installed power capacity has grown rapidly in recent years around ...
Under the background of increasing renewable energy penetration and rigid demand for midterm generat...
Ever increasing penetration of wind power generation along with the integration of energy storage sy...
Ever increasing penetration of wind power generation along with the integration of energy storage sy...
Wind power generation exhibits a strong temporal variability, which is crucial for system integratio...
There are several new emerging environments, generating data spatially spread and interrelated. Thes...
The integration of a large number of wind farms poses big challenges to the secure and economical op...
Abstract When the correlation of wind power output among wind farms is not considered, the integrate...
The aim of this study is to identify a class of models appropriate to describe the wind power produc...
Abstract The impacts of outlying shocks on wind power time series are explored by considering the ou...
In future power systems, a large share of the energy will be generated with wind power plants (WPPs)...
This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivari...
Medium- and long-term wind power output time series are required in stochastic programming model for...
Short-term (up to 2-3 days ahead) probabilistic forecasts of wind power provide forecast users with ...
Short-term (up to 2-3 days ahead) probabilistic forecasts of wind power provide forecast users with ...
The share of wind energy in total installed power capacity has grown rapidly in recent years around ...
Under the background of increasing renewable energy penetration and rigid demand for midterm generat...
Ever increasing penetration of wind power generation along with the integration of energy storage sy...
Ever increasing penetration of wind power generation along with the integration of energy storage sy...
Wind power generation exhibits a strong temporal variability, which is crucial for system integratio...
There are several new emerging environments, generating data spatially spread and interrelated. Thes...
The integration of a large number of wind farms poses big challenges to the secure and economical op...
Abstract When the correlation of wind power output among wind farms is not considered, the integrate...
The aim of this study is to identify a class of models appropriate to describe the wind power produc...
Abstract The impacts of outlying shocks on wind power time series are explored by considering the ou...
In future power systems, a large share of the energy will be generated with wind power plants (WPPs)...