In this master thesis we have worked with seven different machine learning methods to discover which algorithm is best suited for predicting the next-day electricity price for the Norwegian price area NO1 on Nord Pool Spot. Based on historical price, consumption, weather and reservoir data, we have created our own data sets. Data from 2001 through 2009 was gathered, where the last one third of the period was used for testing. We have tested our selected machine learning methods on seven different subsets. We have used the following machine learning algorithms: model trees, linear regression, neural nets, RBF networks, Gaussian process, support vector machines and evolutionary computation. Through our experiments we have found that a ...
This research provides benchmark accuracies for forecasting of an aggregated price of the Dutch intr...
The Greek Energy Market is structured as a mandatory pool where the producers make their bid offers ...
The importance of electricity in people’s daily lives has made it an indispensable commodity in soci...
In this master thesis we have worked with seven different machine learning methods to discover which...
The uncertainty caused by the increased use of renewable energy sources makes it more essential to f...
This thesis reports findings from a number of modern machine learning techniques applied to electric...
Aim of this paper is to describe and compare the machine learning and deep learning based forecastin...
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 ...
In this paper, a novel modeling framework for forecasting electricity prices is proposed. While many...
Having the ability to predict future electricity price proposes an interesting strategy to electrici...
Effective and reliable electricity price forecast is essential for market participants in setting up...
International Symposium on Neural Networks, ISNN 2009, Wuhan, China, 26-29 May 2009Effective and rel...
ABSTRACT - The spot price prediction for the electric energy markets is a widely approached problem,...
The objective of this research assignment was to forecast electricity prices in the Spanish electric...
This research provides benchmark accuracies for forecasting of an aggregated price of the Dutch intr...
The Greek Energy Market is structured as a mandatory pool where the producers make their bid offers ...
The importance of electricity in people’s daily lives has made it an indispensable commodity in soci...
In this master thesis we have worked with seven different machine learning methods to discover which...
The uncertainty caused by the increased use of renewable energy sources makes it more essential to f...
This thesis reports findings from a number of modern machine learning techniques applied to electric...
Aim of this paper is to describe and compare the machine learning and deep learning based forecastin...
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 ...
In this paper, a novel modeling framework for forecasting electricity prices is proposed. While many...
Having the ability to predict future electricity price proposes an interesting strategy to electrici...
Effective and reliable electricity price forecast is essential for market participants in setting up...
International Symposium on Neural Networks, ISNN 2009, Wuhan, China, 26-29 May 2009Effective and rel...
ABSTRACT - The spot price prediction for the electric energy markets is a widely approached problem,...
The objective of this research assignment was to forecast electricity prices in the Spanish electric...
This research provides benchmark accuracies for forecasting of an aggregated price of the Dutch intr...
The Greek Energy Market is structured as a mandatory pool where the producers make their bid offers ...
The importance of electricity in people’s daily lives has made it an indispensable commodity in soci...