In this paper we propose a Quantile Regression Deep Neural Network capable of forecasting multiple quantiles in one model using a combined quantile loss function, and apply it to probabilistically forecast the prices of 8 European Day Ahead Markets. We show that the proposed loss function significantly reduces the quantile crossing problem to (near) 0% in all markets considered, while in some cases simultaneously increasing forecasting performance based on classical point forecast metrics applied to the expected value of the probabilistic forecast. The models are optimized using an automated approach with an elaborate feature- and hyperparameter search space, leading to good model performance in all considered markets.Green Open Access adde...
Abstract Compared to traditional point load forecasting, probabilistic load forecasting (PLF) has gr...
The classification technique and data forecasting will probably be one of the techniques that will o...
Motivated by the increasing integration among electricity markets, in this paper we propose two diff...
In this manuscript we explore European feature importance in Day Ahead Market (DAM) price forecastin...
Producción CientíficaThis work proposes a quantile regression neural network based on a novel constr...
In recent years there has been a large increase in available data from the electric grid in Finland....
In this manuscript we explore European feature importance in Day Ahead Market (DAM) price forecastin...
Residential load forecasting is important for many entities in the electricity market, but the load ...
Precise price forecasting can lessen the risk of participation in the deregulated electricity market...
Within deregulated economies, large electricity volumes are traded in daily spot markets, which are ...
This paper presents the results obtained in the development of probabilistic short-term forecasting ...
This article presents a new method for forecasting Value at Risk. Convolutional neural networks can ...
This paper presents a new approach to estimating the conditional probability distribution of multipe...
This thesis investigates forecasting performance of Quantile Regression Neural Networks in forecasti...
The availability of accurate day-ahead energy prices forecasts is crucial to achieve a successful pa...
Abstract Compared to traditional point load forecasting, probabilistic load forecasting (PLF) has gr...
The classification technique and data forecasting will probably be one of the techniques that will o...
Motivated by the increasing integration among electricity markets, in this paper we propose two diff...
In this manuscript we explore European feature importance in Day Ahead Market (DAM) price forecastin...
Producción CientíficaThis work proposes a quantile regression neural network based on a novel constr...
In recent years there has been a large increase in available data from the electric grid in Finland....
In this manuscript we explore European feature importance in Day Ahead Market (DAM) price forecastin...
Residential load forecasting is important for many entities in the electricity market, but the load ...
Precise price forecasting can lessen the risk of participation in the deregulated electricity market...
Within deregulated economies, large electricity volumes are traded in daily spot markets, which are ...
This paper presents the results obtained in the development of probabilistic short-term forecasting ...
This article presents a new method for forecasting Value at Risk. Convolutional neural networks can ...
This paper presents a new approach to estimating the conditional probability distribution of multipe...
This thesis investigates forecasting performance of Quantile Regression Neural Networks in forecasti...
The availability of accurate day-ahead energy prices forecasts is crucial to achieve a successful pa...
Abstract Compared to traditional point load forecasting, probabilistic load forecasting (PLF) has gr...
The classification technique and data forecasting will probably be one of the techniques that will o...
Motivated by the increasing integration among electricity markets, in this paper we propose two diff...