Year-ahead forecasting of electricity prices is an important issue in the current context of electricity markets. Nevertheless, only one-day-ahead forecasting is commonly tackled up in previous published works. Moreover, methodology developed for the short-term does not work properly for long-term forecasting. In this paper we provide a seasonal extension of the Non-Stationary Dynamic Factor Analysis, to deal with the interesting problem (both from the economic and engineering point of view) of long term forecasting of electricity prices. Seasonal Dynamic Factor Analysis (SeaDFA) allows to deal with dimensionality reduction in vectors of time series, in such a way that extracts common and specific components. Furthermore, common fac...
Seasonality is an important topic in electricity markets, as both supply and demand are dependent o...
Novel periodic extensions of dynamic long-memory regression models with autoregressive conditional h...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
Year-ahead forecasting of electricity prices is an important issue in the current context of electr...
Recent studies suggest that decomposing a series of electricity spot prices into a trend-seasonal an...
In the context of the liberalization of electricity markets, forecasting prices is essential. With ...
In the context of the liberalization of electricity markets, forecasting prices is essential. With t...
The optimal design of offering strategies for wind power producers is commonly based on unconditiona...
Developing predictive models is a complex task since it deals with the uncertainty and the stochasti...
This article provides a solution based on statistical methods (ARIMA, ETS, and Prophet) to predict m...
Nowadays, modeling and forecasting electricity spot prices are challenging due to their specific fea...
Electricity markets throughout the world have undergone substantial changes. Accurate, reliable, cle...
In this paper we consider the forecasting performance of a range of semi- and non-parametric methods...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
The class of arithmetic factor models is flexible enough to model all stylized facts occurring in el...
Seasonality is an important topic in electricity markets, as both supply and demand are dependent o...
Novel periodic extensions of dynamic long-memory regression models with autoregressive conditional h...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
Year-ahead forecasting of electricity prices is an important issue in the current context of electr...
Recent studies suggest that decomposing a series of electricity spot prices into a trend-seasonal an...
In the context of the liberalization of electricity markets, forecasting prices is essential. With ...
In the context of the liberalization of electricity markets, forecasting prices is essential. With t...
The optimal design of offering strategies for wind power producers is commonly based on unconditiona...
Developing predictive models is a complex task since it deals with the uncertainty and the stochasti...
This article provides a solution based on statistical methods (ARIMA, ETS, and Prophet) to predict m...
Nowadays, modeling and forecasting electricity spot prices are challenging due to their specific fea...
Electricity markets throughout the world have undergone substantial changes. Accurate, reliable, cle...
In this paper we consider the forecasting performance of a range of semi- and non-parametric methods...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
The class of arithmetic factor models is flexible enough to model all stylized facts occurring in el...
Seasonality is an important topic in electricity markets, as both supply and demand are dependent o...
Novel periodic extensions of dynamic long-memory regression models with autoregressive conditional h...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...