Electricity is an important asset that influences not only the economy, but political or social security of a country. Reliable and accurate planning and prediction of electricity demand for a country are therefore vital. In this paper, electricity demand in Ontario province of Canada from the year 1976–2005 is modeled by using an (adaptive neuro fuzzy inference system) ANFIS. A neuro fuzzy structure can be defined as an ANN (artificial neural network) which is trained by experimental data to find the parameters of (fuzzy inference system) FIS. Inputs for the model include number of employment, (gross domestic product) GDP, population, dwelling count and two meteorological parameters related to annual weather temperature. The data were coll...
This article provides a way of accurately predicting one-hour-ahead load of a utility company locate...
The paper discusses the implementation of a fuzzy-logic approach to provide a structural framework f...
This paper aims to develop a hybrid model for forecasting electrical energy consumption of household...
Electricity is one of the energy types that have attracted a lotof interest due to its versatility.R...
This paper is concerned with the reliable prediction of electricity demands using the Adaptive Neuro...
In this paper the development of neural network based fuzzy inference system for electricity consump...
Abstract—Electric load forecasting is an important research field to increase reliability of power s...
Power demand forecasting is a significant factor in the planning and economic and secure operation o...
Short-term load forecasting is an important issue for the electric power system in efficiently manag...
The rapid growth of Indonesia's population increases electricity consumption. Unfortunately, this gr...
* IEEE Member Abstract: The huge consumption of electric energy in these days has given the load for...
Accurate prediction of future electrical power demands greatly facilitates the task of power generat...
This study proposes an integrated adaptive neuro fuzzy inference system (ANFIS) and gene expression ...
Load forecasting has many applications for power systems, including energy purchasing and generation...
In this paper, a number of approaches to the modelling of electricity demand, on a variety of time-s...
This article provides a way of accurately predicting one-hour-ahead load of a utility company locate...
The paper discusses the implementation of a fuzzy-logic approach to provide a structural framework f...
This paper aims to develop a hybrid model for forecasting electrical energy consumption of household...
Electricity is one of the energy types that have attracted a lotof interest due to its versatility.R...
This paper is concerned with the reliable prediction of electricity demands using the Adaptive Neuro...
In this paper the development of neural network based fuzzy inference system for electricity consump...
Abstract—Electric load forecasting is an important research field to increase reliability of power s...
Power demand forecasting is a significant factor in the planning and economic and secure operation o...
Short-term load forecasting is an important issue for the electric power system in efficiently manag...
The rapid growth of Indonesia's population increases electricity consumption. Unfortunately, this gr...
* IEEE Member Abstract: The huge consumption of electric energy in these days has given the load for...
Accurate prediction of future electrical power demands greatly facilitates the task of power generat...
This study proposes an integrated adaptive neuro fuzzy inference system (ANFIS) and gene expression ...
Load forecasting has many applications for power systems, including energy purchasing and generation...
In this paper, a number of approaches to the modelling of electricity demand, on a variety of time-s...
This article provides a way of accurately predicting one-hour-ahead load of a utility company locate...
The paper discusses the implementation of a fuzzy-logic approach to provide a structural framework f...
This paper aims to develop a hybrid model for forecasting electrical energy consumption of household...