In a competitive electricity market, an accurate forecasting of energy prices is an important activity for all the market participants. This paper proposes a novel approach based on Neural Networks for forecasting energy prices. Two different architectures of Neural Networks are used. In particular, Multi-Layer Perceptron (MLP) and Fully Connected Neural (FCN) networks are designed, calibrated and compared
Abstract: General analysis of Electricity markets shows that development and improvement of predicti...
The increase of distributed energy resources in the smart grid calls for new ways to profitably expl...
The increase of distributed energy resources in the smart grid calls for new ways to profitably expl...
In a competitive electricity market, an accurate forecasting of energy prices is an important activi...
Forecasting electricity prices is today an essential tool in the day-ahead competitive market. Predi...
In today’s deregulated markets, forecasting energy prices is becoming more and more important. In th...
Forecasting electricity prices is one of the most important issues in the competitive environment of...
Energy commodity prices are a crucial variable in the economic context given their role in the consu...
Deregulation of the electric power industry worldwide raises many challenging issues. Forecasting th...
This paper proposes a comparative model for the day-ahead electricity price forecasting that could b...
Abstract:- This paper is about the use of artificial neural networks on day-ahead electricity prices...
Abstract:- This paper proposes a novel and practical approach to forecast electricity prices with la...
This paper proposes a neural network approach for forecasting short-term electricity prices. Almost ...
ABSTRACT - The spot price prediction for the electric energy markets is a widely approached problem,...
Computational Intelligence models are the newest family of models to tackle the research problem of ...
Abstract: General analysis of Electricity markets shows that development and improvement of predicti...
The increase of distributed energy resources in the smart grid calls for new ways to profitably expl...
The increase of distributed energy resources in the smart grid calls for new ways to profitably expl...
In a competitive electricity market, an accurate forecasting of energy prices is an important activi...
Forecasting electricity prices is today an essential tool in the day-ahead competitive market. Predi...
In today’s deregulated markets, forecasting energy prices is becoming more and more important. In th...
Forecasting electricity prices is one of the most important issues in the competitive environment of...
Energy commodity prices are a crucial variable in the economic context given their role in the consu...
Deregulation of the electric power industry worldwide raises many challenging issues. Forecasting th...
This paper proposes a comparative model for the day-ahead electricity price forecasting that could b...
Abstract:- This paper is about the use of artificial neural networks on day-ahead electricity prices...
Abstract:- This paper proposes a novel and practical approach to forecast electricity prices with la...
This paper proposes a neural network approach for forecasting short-term electricity prices. Almost ...
ABSTRACT - The spot price prediction for the electric energy markets is a widely approached problem,...
Computational Intelligence models are the newest family of models to tackle the research problem of ...
Abstract: General analysis of Electricity markets shows that development and improvement of predicti...
The increase of distributed energy resources in the smart grid calls for new ways to profitably expl...
The increase of distributed energy resources in the smart grid calls for new ways to profitably expl...