The paper illustrates a combined approach based on unsupervised and supervised neural networks for the electric energy demand forecasting of a suburban area with a prediction time of 24 h. A preventive classification of the historical load data is performed during the unsupervised stage by means of a Kohonen's self organizing map (SOM). The actual forecast is obtained using a two layered feed forward neural network, trained with the back propagation with momentum learning algorithm. In order to investigate the influence of climate variability on the electricity consumption, the neural network is trained using weather data (temperature, relative humidity, global solar radiation) along with historical load data available for a part of the ele...
Electricity is indispensable and of strategic importance to national economies. Consequently, electr...
AbstractIt is important to understand and forecast a typical or a particularly household daily consu...
The electrification of end-uses is causing a substantial increase in electrical demand in urban dist...
The paper illustrates a combined approach based on unsupervised and supervised neural networks for t...
The paper illustrates two different Artificial Neural Networks (ANN) architectures for electric Shor...
This work studies the applicability of this kind of models and offers some extra models for electric...
Load forecasting is an important operational procedure for the electric industry particularly in a l...
The prediction of the electric demand has become as one of the main investigation fields in the elec...
In a previous study a basic Multi Layer Perceptron Artificial Neural Network for Short-Term Forecast...
Short-term electrical load forecasting is a topic of major interest for the planning of energy produ...
Load forecasting in the current, increasingly liberalized, electricity power market is of crucial im...
Seasonal fluctuations in electricity consumption, an uneven load of supply lines reduce not only the...
Load forecasting is an important tool for both the energy and environmental sectors. It has progress...
One of the most important requirements for the operation and planning activities of an electrical ut...
Short-term forecasting of power consumption is an important tool for decision makers in the energy s...
Electricity is indispensable and of strategic importance to national economies. Consequently, electr...
AbstractIt is important to understand and forecast a typical or a particularly household daily consu...
The electrification of end-uses is causing a substantial increase in electrical demand in urban dist...
The paper illustrates a combined approach based on unsupervised and supervised neural networks for t...
The paper illustrates two different Artificial Neural Networks (ANN) architectures for electric Shor...
This work studies the applicability of this kind of models and offers some extra models for electric...
Load forecasting is an important operational procedure for the electric industry particularly in a l...
The prediction of the electric demand has become as one of the main investigation fields in the elec...
In a previous study a basic Multi Layer Perceptron Artificial Neural Network for Short-Term Forecast...
Short-term electrical load forecasting is a topic of major interest for the planning of energy produ...
Load forecasting in the current, increasingly liberalized, electricity power market is of crucial im...
Seasonal fluctuations in electricity consumption, an uneven load of supply lines reduce not only the...
Load forecasting is an important tool for both the energy and environmental sectors. It has progress...
One of the most important requirements for the operation and planning activities of an electrical ut...
Short-term forecasting of power consumption is an important tool for decision makers in the energy s...
Electricity is indispensable and of strategic importance to national economies. Consequently, electr...
AbstractIt is important to understand and forecast a typical or a particularly household daily consu...
The electrification of end-uses is causing a substantial increase in electrical demand in urban dist...