The paper proposes a novel hybrid feature selection (FS) method for day-ahead electricity price forecasting. The work presents a novel hybrid FS algorithm for obtaining optimal feature set to gain optimal forecast accuracy. The performance of the proposed forecaster is compared with forecasters based on classification tree and regression tree. A hybrid FS method based on the elitist genetic algorithm (GA) and a tree-based method is applied for FS. Making use of selected features, aperformance test of the forecaster was carried out to establish the usefulness of the proposed approach. By way of analyzing and forecasts for day-ahead electricity prices in the Australian electricity markets, the proposed approach is evaluated and it has been es...
Accurate forecasting tools are essential in the operation of electric power systems, especially in d...
Smart grid has evolved into a viable platform for participants of electricity market to effectively ...
Regarding the complex behaviour of price signalling, its prediction is difficult, where an accurate ...
The paper proposes a novel hybrid feature selection (FS) method for day-ahead electricity price fore...
A hybrid feature selection (HFS) algorithm to obtain the optimal feature set to attain optimal forec...
Electricity spot market prices are increasingly affected by an expanding amount of renewables and a ...
The day-ahead electricity market is closely related to other commodity markets such as the fuel and ...
www.ietdl.orgHowever, electricity price forecast is a complex task due to non-linearity, non-station...
Electricity price forecasting has nowadays become a significant task to all market players in deregu...
Forecasting electricity price in a deregulated market is important for the market participants. Feat...
In this paper, a hybrid electricity price forecasting method which is composed of two-stage feature ...
The development of artificial intelligence (AI) based techniques for electricity price forecasting (...
In deregulated, auction-based, electricity markets price forecasting is an essential participant too...
Price prediction has now become an important task in the operation of electrical power system. In sh...
Abstract. In the framework of competitive markets, the market’s par-ticipants need energy price fore...
Accurate forecasting tools are essential in the operation of electric power systems, especially in d...
Smart grid has evolved into a viable platform for participants of electricity market to effectively ...
Regarding the complex behaviour of price signalling, its prediction is difficult, where an accurate ...
The paper proposes a novel hybrid feature selection (FS) method for day-ahead electricity price fore...
A hybrid feature selection (HFS) algorithm to obtain the optimal feature set to attain optimal forec...
Electricity spot market prices are increasingly affected by an expanding amount of renewables and a ...
The day-ahead electricity market is closely related to other commodity markets such as the fuel and ...
www.ietdl.orgHowever, electricity price forecast is a complex task due to non-linearity, non-station...
Electricity price forecasting has nowadays become a significant task to all market players in deregu...
Forecasting electricity price in a deregulated market is important for the market participants. Feat...
In this paper, a hybrid electricity price forecasting method which is composed of two-stage feature ...
The development of artificial intelligence (AI) based techniques for electricity price forecasting (...
In deregulated, auction-based, electricity markets price forecasting is an essential participant too...
Price prediction has now become an important task in the operation of electrical power system. In sh...
Abstract. In the framework of competitive markets, the market’s par-ticipants need energy price fore...
Accurate forecasting tools are essential in the operation of electric power systems, especially in d...
Smart grid has evolved into a viable platform for participants of electricity market to effectively ...
Regarding the complex behaviour of price signalling, its prediction is difficult, where an accurate ...