The ever-increasing number of wind farms has brought both challenges and opportunities in the development of wind power forecasting techniques to take advantage of interdependencies between tens or hundreds of spatially distributed wind farms, e.g., over a region. In this paper, a sparsity-controlled vector autoregressive (SC-VAR) model is introduced to obtain sparse model structures in a spatio-temporal wind power forecasting framework by reformulating the original VAR model into a constrained mixed integer nonlinear programming (MINLP) problem. It allows controlling the sparsity of the coefficient matrices in direct manner. However this original SC-VAR is difficult to implement due to its complicated constraints and the lack of guidelines...
With the ongoing increase in installed wind power production and due to the variability of this reso...
This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivari...
In future power systems, a large share of the energy will be generated with wind power plants (WPPs)...
A spatio-temporal method for producing very-short-term parametric probabilistic wind power forecasts...
The deployment of smart grids and renewable energy dispatch centers motivates the development of for...
The share of wind energy in total installed power capacity has grown rapidly in recent years around ...
The integration of a large number of wind farms poses big challenges to the secure and economical op...
This master thesis examines short term wind power forecasting time series models focusing on regimes...
International audienceThe large density of wind farm installations in an electricity grid imposes se...
The share of wind energy in total installed power capacity has grown rapidly in recent years. Produc...
Ever increasing penetration of wind power generation along with the integration of energy storage sy...
Abstract—State-of-the-art statistical learning techniques are adapted in this contribution for real-...
Ever increasing penetration of wind power generation along with the integration of energy storage sy...
To reduce the operation and maintenance cost for wind farms, turbine operators are actively developi...
Many European energy supply systems are increasingly penetrated by wind energy. In order to be able ...
With the ongoing increase in installed wind power production and due to the variability of this reso...
This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivari...
In future power systems, a large share of the energy will be generated with wind power plants (WPPs)...
A spatio-temporal method for producing very-short-term parametric probabilistic wind power forecasts...
The deployment of smart grids and renewable energy dispatch centers motivates the development of for...
The share of wind energy in total installed power capacity has grown rapidly in recent years around ...
The integration of a large number of wind farms poses big challenges to the secure and economical op...
This master thesis examines short term wind power forecasting time series models focusing on regimes...
International audienceThe large density of wind farm installations in an electricity grid imposes se...
The share of wind energy in total installed power capacity has grown rapidly in recent years. Produc...
Ever increasing penetration of wind power generation along with the integration of energy storage sy...
Abstract—State-of-the-art statistical learning techniques are adapted in this contribution for real-...
Ever increasing penetration of wind power generation along with the integration of energy storage sy...
To reduce the operation and maintenance cost for wind farms, turbine operators are actively developi...
Many European energy supply systems are increasingly penetrated by wind energy. In order to be able ...
With the ongoing increase in installed wind power production and due to the variability of this reso...
This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivari...
In future power systems, a large share of the energy will be generated with wind power plants (WPPs)...