Deregulation of the electric power industry worldwide raises many challenging issues. Forecasting the hourly market clearing prices and quantities in daily power markets is the most essential task and basis for any decision making. One approach to predict the market behaviors is to use the historical prices, quantities and other information to forecast the future prices and quantities. The basic idea is to use history and other estimated factors in the future to "fit" and "extrapolate" the prices and quantities. Aiming at this challenging task, we developed a neural network method to forecast the MCPs and MCQs for the California day-ahead energy markets. The structure of the neural network is a three-layer back propagation (BP) network. The...
Factors such as uncertainty associated to fuel prices, energy demand and generation availability, a...
This paper proposes a comparative model for the day-ahead electricity price forecasting that could b...
This paper proposes a neural network approach for forecasting short-term electricity prices. Almost ...
Abstract: General analysis of Electricity markets shows that development and improvement of predicti...
With the deregulation of the electric power market in New England, an independent system operator (I...
Forecasting electricity prices is one of the most important issues in the competitive environment of...
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...
In a deregulated power market, generating companies (Gencos) evaluate bidding strategies to maximize...
Accurate and effective electricity price forecasting is critical to market participants in order to ...
Forecasting electricity prices is today an essential tool in the day-ahead competitive market. Predi...
Within deregulated economies, large electricity volumes are traded in daily spot markets, which are ...
In today’s deregulated markets, forecasting energy prices is becoming more and more important. In th...
With electricity markets birth, electricity price volatility becomes one of the major concerns for t...
Electricity price forecasting has become an integral part of power system operation and control. Thi...
Factors such as uncertainty associated to fuel prices, energy demand and generation availability, a...
This paper proposes a comparative model for the day-ahead electricity price forecasting that could b...
This paper proposes a neural network approach for forecasting short-term electricity prices. Almost ...
Abstract: General analysis of Electricity markets shows that development and improvement of predicti...
With the deregulation of the electric power market in New England, an independent system operator (I...
Forecasting electricity prices is one of the most important issues in the competitive environment of...
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...
In a deregulated power market, generating companies (Gencos) evaluate bidding strategies to maximize...
Accurate and effective electricity price forecasting is critical to market participants in order to ...
Forecasting electricity prices is today an essential tool in the day-ahead competitive market. Predi...
Within deregulated economies, large electricity volumes are traded in daily spot markets, which are ...
In today’s deregulated markets, forecasting energy prices is becoming more and more important. In th...
With electricity markets birth, electricity price volatility becomes one of the major concerns for t...
Electricity price forecasting has become an integral part of power system operation and control. Thi...
Factors such as uncertainty associated to fuel prices, energy demand and generation availability, a...
This paper proposes a comparative model for the day-ahead electricity price forecasting that could b...
This paper proposes a neural network approach for forecasting short-term electricity prices. Almost ...