This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivariate AutoRegressive Conditional Heteroskedasticity) volatility models to the problem of modeling (i.e. generating correct in-sample scenarios) and forecasting in a probabilistic way three univariate but mutually dependent wind speed hourly series. The evaluation starts from the consideration that optimal modeling and optimal forecasting are not necessarily attained by the same models, and that they are assessed in different ways. The proposed VAR-mGARCH family, originated in Finance, consists of the VAR-BEKK (VAR - Baba, Engle, Kraft and Kroner) model and the VAR-DCC (VAR - Dynamic Conditional Correlation) model, the latter seen as the simplif...
Forecasting wind speed and direction is a challenging issue in the fi eld of meteorological researc...
This paper proposes a stochastic wind power model based on an autoregressive integrated moving avera...
The wind power generation depends on wind speed and its derivatives like: wind speed and direction. ...
This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivari...
This paper discusses the application of five t-GARCH models to the problem of accurately modeling th...
Abstract: The increasing share of wind energy in the portfolio of energy sources highlights its unce...
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 ...
Abstract: The stability and availability required on the electrical power systems with wind sources ...
International audienceIn this paper, non-homogeneous Markov-Switching Autoregressive (MS-AR) models ...
This paper presents a non-homogeneous Markov Chain (MC) model for generation of wind speed (WS) and ...
The short-term (1 to 48 hours) predictability of wind power production from wind power plants in a p...
Scenario forecasting methods have been widely studied in recent years to cope with the wind power un...
A spatio-temporal method for producing very-short-term parametric probabilistic wind power forecasts...
Forecasting wind speed and direction is a challenging issue in the fi eld of meteorological researc...
This paper proposes a stochastic wind power model based on an autoregressive integrated moving avera...
The wind power generation depends on wind speed and its derivatives like: wind speed and direction. ...
This paper evaluates the application of a family of VAR-mGARCH (Vector AutoRegressive with multivari...
This paper discusses the application of five t-GARCH models to the problem of accurately modeling th...
Abstract: The increasing share of wind energy in the portfolio of energy sources highlights its unce...
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 ...
Abstract: The stability and availability required on the electrical power systems with wind sources ...
International audienceIn this paper, non-homogeneous Markov-Switching Autoregressive (MS-AR) models ...
This paper presents a non-homogeneous Markov Chain (MC) model for generation of wind speed (WS) and ...
The short-term (1 to 48 hours) predictability of wind power production from wind power plants in a p...
Scenario forecasting methods have been widely studied in recent years to cope with the wind power un...
A spatio-temporal method for producing very-short-term parametric probabilistic wind power forecasts...
Forecasting wind speed and direction is a challenging issue in the fi eld of meteorological researc...
This paper proposes a stochastic wind power model based on an autoregressive integrated moving avera...
The wind power generation depends on wind speed and its derivatives like: wind speed and direction. ...