Please use this identifier to cite or link to this item: http://irepo.futminna.edu.ng:8080/jspui/handle/123456789/31932
Title: Ensembled Model of Random Forest and Artificial Neural Network for Short-Term Electric Load Forecasting
Authors: Awulu, Benjamin
Ismaila, Idris
Subairu, Sikiru Olarewanju
Anyaora, Peter Chizaramuekpere
Uduimoh, Andrew Anogie
Keywords: Load forecasting
Artificial neural network
Power system
Load demand
Ensemble model
Issue Date: 15-Aug-2025
Publisher: OIC-CERT Journal of Cyber Security
Series/Report no.: ;06-01-2025
Abstract: The research focuses on secure short-term electric load forecasting using Random Forest and Artificial Neural Network (RF-ANN) models. Accurate forecasting is crucial for maintaining power system stability and efficiency. Inaccurate forecasting can lead to financial losses, increased load shedding events, and decreased customer satisfaction. Techniques like the State Space Method, Stochastic Time Series, Multiple Linear Regression, General Exponential Smoothing, Knowledge-based Expert Approach, and Machine Learning Approach have been used. The dataset from Transmission Company of Nigeria(TCN) was divided into a 70% training and 30% testing set, and performance accuracies were evaluated using Mean Squared Error, Mean Absolute Error, Root Mean Squared Error, and Mean Absolute Percentage Error. The model achieved an accuracy of 1.73. While RMSE has an accuracy of 1.50899, MSE has 2.27704, and MAE accuracy of 0.00521. The study aims to strike a balance between accurate predictions and ethical data treatment.
URI: http://irepo.futminna.edu.ng:8080/jspui/handle/123456789/31932
Appears in Collections:Cyber Security Science

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