Short-Term Electric Power Forecast in the Nigerian Power System Using Artificial Neural Network
Subscribe to read and download this work.
ABSTRACT This thesis is a study of short-term electric power forecasting in the Nigerian power system using artificial neural network model. The model is created in the form of a simulation program written with MATLAB tool. The model, a multilayer timedelayed feed-forward artificial neural network trained with error back propagation algorithm, was made to study the pre-historical load pattern of a typical Nigerian power system in a supervised training manner. After presenting the model with a reasonable number of training samples, the model could forecast correctly electric power supply in the Nigerian power system 24 hours in advance. An absolute mean error of 4.27% was obtained when the trained neural network model was tested on one week, daily hourly load data of a typical Nigerian power station. This result demonstrates that ANN is a powerful tool for load forecasting.
Reviews
No reviews yet.
APA
(2026). Short-Term Electric Power Forecast in the Nigerian Power System Using Artificial Neural Network. Afribary. Retrieved June 14, 2026, from http://library.afribary.com/works/short-term-electric-power-forecast-in-the-nigerian-power-system-using-artificial-neural-network
MLA
"Short-Term Electric Power Forecast in the Nigerian Power System Using Artificial Neural Network." Afribary, 7 Jun. 2026, http://library.afribary.com/works/short-term-electric-power-forecast-in-the-nigerian-power-system-using-artificial-neural-network. Accessed June 14, 2026.
Chicago
"Short-Term Electric Power Forecast in the Nigerian Power System Using Artificial Neural Network." Afribary (2026). Accessed June 14, 2026. http://library.afribary.com/works/short-term-electric-power-forecast-in-the-nigerian-power-system-using-artificial-neural-network