Recent electricity price forecasting (EPF) studies suggest that the least absolute shrinkage and selection operator (LASSO) leads to well performing models that are generally better than those obtained from other variable selection schemes. By conducting an empirical study involving datasets from two major power markets (Nord Pool and PJM Interconnection), three expert models, two multi-parameter regression (called baseline) models and four variance stabilizing transformations combined with the seasonal component approach, we discuss the optimal way of implementing the LASSO. We show that using a complex baseline model with nearly 400 explanatory variables, a well chosen variance stabilizing transformation (asinh or N-PIT), and a procedure ...
Accurate electricity price forecasting (EPF) is crucial to participants and decision-makers within t...
The raising importance of renewable energy, especially solar and wind power, led to new impacts on t...
In this paper we present an extensive comparison of four different classes of models for daily forec...
Recent electricity price forecasting (EPF) studies suggest that the least absolute shrinkage and sel...
Recent studies suggest that decomposing a series of electricity spot prices into a trend-seasonal an...
The electricity price forecasting (EPF) is a challenging task not only because of the uncommon chara...
When the big data time comes, people also need to keep pace with the times to seek and develop tools...
Fundamental dynamics behind electricity prices are multi-dimensional and elaborate. A popular approa...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...
Electricity spot market prices are increasingly affected by an expanding amount of renewables and a ...
This thesis aims to forecast hourly intraday electricity prices on the Nord Pool’s continuous intrad...
Forecasting of electricity prices is important in deregulated electricity markets for all of the sta...
In this comprehensive empirical study we critically evaluate the use of forecast averaging in the co...
In this paper we assess how intra-day electricity prices can improve the prediction of zonal day-ahe...
There is a demand for decision support tools that can model the electricity markets and allows to fo...
Accurate electricity price forecasting (EPF) is crucial to participants and decision-makers within t...
The raising importance of renewable energy, especially solar and wind power, led to new impacts on t...
In this paper we present an extensive comparison of four different classes of models for daily forec...
Recent electricity price forecasting (EPF) studies suggest that the least absolute shrinkage and sel...
Recent studies suggest that decomposing a series of electricity spot prices into a trend-seasonal an...
The electricity price forecasting (EPF) is a challenging task not only because of the uncommon chara...
When the big data time comes, people also need to keep pace with the times to seek and develop tools...
Fundamental dynamics behind electricity prices are multi-dimensional and elaborate. A popular approa...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...
Electricity spot market prices are increasingly affected by an expanding amount of renewables and a ...
This thesis aims to forecast hourly intraday electricity prices on the Nord Pool’s continuous intrad...
Forecasting of electricity prices is important in deregulated electricity markets for all of the sta...
In this comprehensive empirical study we critically evaluate the use of forecast averaging in the co...
In this paper we assess how intra-day electricity prices can improve the prediction of zonal day-ahe...
There is a demand for decision support tools that can model the electricity markets and allows to fo...
Accurate electricity price forecasting (EPF) is crucial to participants and decision-makers within t...
The raising importance of renewable energy, especially solar and wind power, led to new impacts on t...
In this paper we present an extensive comparison of four different classes of models for daily forec...