This paper proposes a comparative model for the day-ahead electricity price forecasting that could be realized using multi-layer neural network (MLNN) with levenberg-marquardt (LM) algorithm, generalized regression neural network (GRNN) and cascade-forward neural network (CFNN). In this work applications of various models were applied to national electricity market of Singapore (NEMS), i.e. Asia's first liberalized electricity market. The individual price of year 2006 is very volatile with a very wide range. Therefore, accurate forecasting models are required for Singapore electricity market company (EMC) to maximize their profits and for consumers to maximize their utilities. Hence the year 2006 has been taken for forecasting the uniform S...
Electricity price is a key influencer in the electricity market. Electricity market trades by each p...
This thesis reports findings from a number of modern machine learning techniques applied to electric...
Deregulation of the electric power industry worldwide raises many challenging issues. Forecasting th...
Having the ability to predict future electricity price proposes an interesting strategy to electrici...
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...
Electricity price forecasting has become an integral part of power system operation and control. Thi...
Forecasting electricity prices is one of the most important issues in the competitive environment of...
In a deregulated power market, generating companies (Gencos) evaluate bidding strategies to maximize...
Electricity markets are complex environments with very dynamic characteristics. The large-scale pene...
In today’s deregulated markets, forecasting energy prices is becoming more and more important. In th...
In a deregulated electricity market where consumers can prepare bidding plans and purchase electrici...
This paper presents neural networks applied for short term electricity price forecasting in Ontario ...
Forecasting electricity prices is today an essential tool in the day-ahead competitive market. Predi...
Abstract: General analysis of Electricity markets shows that development and improvement of predicti...
Electricity price is a key influencer in the electricity market. Electricity market trades by each p...
This thesis reports findings from a number of modern machine learning techniques applied to electric...
Deregulation of the electric power industry worldwide raises many challenging issues. Forecasting th...
Having the ability to predict future electricity price proposes an interesting strategy to electrici...
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...
Electricity price forecasting has become an integral part of power system operation and control. Thi...
Forecasting electricity prices is one of the most important issues in the competitive environment of...
In a deregulated power market, generating companies (Gencos) evaluate bidding strategies to maximize...
Electricity markets are complex environments with very dynamic characteristics. The large-scale pene...
In today’s deregulated markets, forecasting energy prices is becoming more and more important. In th...
In a deregulated electricity market where consumers can prepare bidding plans and purchase electrici...
This paper presents neural networks applied for short term electricity price forecasting in Ontario ...
Forecasting electricity prices is today an essential tool in the day-ahead competitive market. Predi...
Abstract: General analysis of Electricity markets shows that development and improvement of predicti...
Electricity price is a key influencer in the electricity market. Electricity market trades by each p...
This thesis reports findings from a number of modern machine learning techniques applied to electric...
Deregulation of the electric power industry worldwide raises many challenging issues. Forecasting th...