AbstractIn view of the defects of the prediction model based on neural network, such as when doing prediction of nonlinear sequence, it is likely to fall into local hypo-strong point, and the rate of training is very slow. This paper presents a fuzzy wavelet neural network (FWNN) approach for annual electricity consumption in high energy consumption city. It is claimed that, due to high fluctuations of energy consumption in high energy consumption cities, conventional regression models do not forecast energy consumption correctly and precisely. Although ANNs have been typically used to forecast short term consumptions, this paper shows that it is a more precise approach to forecast annual electricity consumption. Furthermore, the FWNN appro...
Forecasting the electricity consumption is one of the most challenging tasks for energy domain stake...
Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to t...
The issue of obtaining reliable forecasting methods for electricity consumption has been widely disc...
AbstractIn view of the defects of the prediction model based on neural network, such as when doing p...
AbstractPower load forecasting is an essential tool for energy management systems. Accurate load for...
Power load forecasting is an essential tool for energy management systems. Accurate load forecasting...
This paper presents the implementation and analysis of two approaches (fuzzy and conventional). Usin...
This paper presents the implementation and analysis of two approaches (fuzzy and conventional). Usin...
In this paper the development of neural network based fuzzy inference system for electricity consump...
Due to the current high energy prices it is essential to find ways to take advantage of new energy r...
Forecasting the electricity consumption is one of the most challenging tasks for energy domain stake...
Monthly energy forecasts help heavy consumers of electric power to prepare adequate budget to pay th...
Forecasting the electricity consumption is one of the most challenging tasks for energy domain stake...
AbstractThis paper proposes the level suitably of a wavelet transform and a neural network method th...
Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to t...
Forecasting the electricity consumption is one of the most challenging tasks for energy domain stake...
Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to t...
The issue of obtaining reliable forecasting methods for electricity consumption has been widely disc...
AbstractIn view of the defects of the prediction model based on neural network, such as when doing p...
AbstractPower load forecasting is an essential tool for energy management systems. Accurate load for...
Power load forecasting is an essential tool for energy management systems. Accurate load forecasting...
This paper presents the implementation and analysis of two approaches (fuzzy and conventional). Usin...
This paper presents the implementation and analysis of two approaches (fuzzy and conventional). Usin...
In this paper the development of neural network based fuzzy inference system for electricity consump...
Due to the current high energy prices it is essential to find ways to take advantage of new energy r...
Forecasting the electricity consumption is one of the most challenging tasks for energy domain stake...
Monthly energy forecasts help heavy consumers of electric power to prepare adequate budget to pay th...
Forecasting the electricity consumption is one of the most challenging tasks for energy domain stake...
AbstractThis paper proposes the level suitably of a wavelet transform and a neural network method th...
Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to t...
Forecasting the electricity consumption is one of the most challenging tasks for energy domain stake...
Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to t...
The issue of obtaining reliable forecasting methods for electricity consumption has been widely disc...