This paper presents load scheduling for smart home application using day-ahead prediction from an artificial neural network (ANN). In this study, load forecasting using ANN approach is embedded in the load scheduling scheme that is modeled using mixed integer linear programming (MILP). The main objective of the scheduling is to reduce the electricity bill by shifting peak load to off-peak period. A day-ahead energy consumption is predicted based on a previous yearly data set of hourly resolution. The dataset is normalized and injected as input in ANN and the result is then fed to the load scheduling optimization process. The results show that the integration process affects the allocation of load consumption in the load profile as well as t...
The paper presents an Artificial Neural Network (ANN) model for short-term load forecasting of daily...
Smart home is popular because of its intelligence, convenience and other excellent characteristics. ...
Penetration of distributed energy resources in distribution networks is predicted to increase dramat...
Artificial Neural Network (ANN) in Mixed-Integer Linear Programming (MILP) technique for load schedu...
Load forecasting is an important operational procedure for the electric industry particularly in a l...
Presently, electrical energy consumption continues to increase from year to year. Therefore, a short...
A Smart Grid approach to electric distribution system management needs to front uncertainties in gen...
In the context of the smart grid, scheduling residential energy storage device is necessary to optim...
Accurate electricity demand forecasts are critical for daily operations planning. They influence man...
In the operation of a smart grid (SG), day-ahead load forecasting (DLF) is an important task. The SG...
The prediction of the electric demand has become as one of the main investigation fields in the elec...
Abstract- Artificial Neural Network (ANN) Method is ap-plied to forecast the short-term load for a l...
One of the most important requirements for the operation and planning activities of an electrical ut...
Load forecasting remains as an important activity for the power systems industry, being a critical s...
Load forecasting is the technique for prediction of electrical load. In a deregulated market it is m...
The paper presents an Artificial Neural Network (ANN) model for short-term load forecasting of daily...
Smart home is popular because of its intelligence, convenience and other excellent characteristics. ...
Penetration of distributed energy resources in distribution networks is predicted to increase dramat...
Artificial Neural Network (ANN) in Mixed-Integer Linear Programming (MILP) technique for load schedu...
Load forecasting is an important operational procedure for the electric industry particularly in a l...
Presently, electrical energy consumption continues to increase from year to year. Therefore, a short...
A Smart Grid approach to electric distribution system management needs to front uncertainties in gen...
In the context of the smart grid, scheduling residential energy storage device is necessary to optim...
Accurate electricity demand forecasts are critical for daily operations planning. They influence man...
In the operation of a smart grid (SG), day-ahead load forecasting (DLF) is an important task. The SG...
The prediction of the electric demand has become as one of the main investigation fields in the elec...
Abstract- Artificial Neural Network (ANN) Method is ap-plied to forecast the short-term load for a l...
One of the most important requirements for the operation and planning activities of an electrical ut...
Load forecasting remains as an important activity for the power systems industry, being a critical s...
Load forecasting is the technique for prediction of electrical load. In a deregulated market it is m...
The paper presents an Artificial Neural Network (ANN) model for short-term load forecasting of daily...
Smart home is popular because of its intelligence, convenience and other excellent characteristics. ...
Penetration of distributed energy resources in distribution networks is predicted to increase dramat...