Local energy markets require various types of forecasting. Even if the existing methods are more and more accurate, there is a continuous search for more advanced methods able to quantify the uncertainty of various electrical and price signals. Although a wide range of machine learning methods has been applied to electricity forecasting, in this chapter we will pass from linear models to state-of-the-art deep learning methods in an attempt to understand which are their most interesting challenges and limitations. The day-ahead electricity load forecast performance is analyzed for five EU countries. Consequently, we perform a comparison between Ordinary Least Squares, Ridge Regression, Bayesian Ridge Regression, Kernel Ridge Regression, Supp...
Electrical load forecasting provides knowledge about future consumption and generation of electricit...
Recently, a hot research topic has been time series forecasting via randomized neural networks and i...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
Local energy markets require various types of forecasting. Even if the existing methods are more and...
In this paper, a novel modeling framework for forecasting electricity prices is proposed. While many...
The availability of accurate day-ahead energy prices forecasts is crucial to achieve a successful pa...
Electricity load and price data pose formidable challenges for forecasting due to their intricate ch...
While the field of electricity price forecasting has benefited from plenty of contributions in the l...
The importance of electricity in people’s daily lives has made it an indispensable commodity in soci...
Computational Intelligence models are the newest family of models to tackle the research problem of ...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...
Electricity price depends on numerous factors including the weather, location, time of year/month/da...
This paper presents an overview of some Deep Learning (DL) techniques applicable to forecasting elec...
In recent years, energy prices have become increasingly volatile, making it more challenging to pred...
Locational marginal pricing (LMP) is a pricing mechanism used in electricity transmission systems wh...
Electrical load forecasting provides knowledge about future consumption and generation of electricit...
Recently, a hot research topic has been time series forecasting via randomized neural networks and i...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
Local energy markets require various types of forecasting. Even if the existing methods are more and...
In this paper, a novel modeling framework for forecasting electricity prices is proposed. While many...
The availability of accurate day-ahead energy prices forecasts is crucial to achieve a successful pa...
Electricity load and price data pose formidable challenges for forecasting due to their intricate ch...
While the field of electricity price forecasting has benefited from plenty of contributions in the l...
The importance of electricity in people’s daily lives has made it an indispensable commodity in soci...
Computational Intelligence models are the newest family of models to tackle the research problem of ...
In this paper machine learning models are estimated to predict electricity prices. As it is well kno...
Electricity price depends on numerous factors including the weather, location, time of year/month/da...
This paper presents an overview of some Deep Learning (DL) techniques applicable to forecasting elec...
In recent years, energy prices have become increasingly volatile, making it more challenging to pred...
Locational marginal pricing (LMP) is a pricing mechanism used in electricity transmission systems wh...
Electrical load forecasting provides knowledge about future consumption and generation of electricit...
Recently, a hot research topic has been time series forecasting via randomized neural networks and i...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...