Enhanced Monthly Load Forecasting With RapidMiner-Based Deep Learning

VERSION OF RECORD ONLINE: 18/09/2025

Các tác giả

Email tác giả liên hệ:

nhontd@hcmute.edu.vn

DOI:

https://doi.org/10.54644/jte.2025.1901

Từ khóa:

Electric Load Forecasting, Rapid Miner Model, Artificial Intelligence, Deep Learning, Feature Selection

Tóm tắt

Precise electrical demand forecasting is crucial for maintaining the reliability of the electricity supply, particularly in large urban centers. This study developed an artificial intelligence model with the ability to forecast daily electricity load over several months with high accuracy. The proposed model was trained and validated using historical energy consumption and meteorological data in a case study carried out in Ho Chi Minh City, Vietnam. Unlike previous MATLAB studies, this study employed the RapidMiner program to reduce calculation time and give a visual framework. The mean absolute percent error (MAPE) was used to evaluate prediction performance, yielding a MAPE of 0.52%, compared to 1.1% for Decision Tree and 8.9% for Support Vector Machine. Testing demonstrated that the proposed Deep Learning model significantly outperformed the baseline models. By incorporating feature extraction and explainability techniques, the model achieved high sensitivity to fluctuations, as indicated by an R-squared (R²) value of 0.999. These results suggest that the model is practical for real-world applications and can assist in improving power system operation planning.

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Tiểu sử của Tác giả

Gia-Tue Tang, Ho Chi Minh City University of Technology and Education, Vietnam

Gia-Tue Tang graduated from the Industrial University of Ho Chi Minh City, Vietnam, in 2023 with a B. Eng. degree in Electrical and Electronic Engineering. She is currently pursuing an M.Eng. degree in Electrical Engineering at Ho Chi Minh City University of Technology and Education. Her areas of research interest are power system stability management.

Email: 2430615@student.hcmute.edu.vn. ORCID:  https://orcid.org/0009-0009-2992-3259

Dinh-Nhon Truong, Ho Chi Minh City University of Technology and Education, Vietnam

Dinh-Nhon Truong, Ph.D., is an Associate Professor at the Faculty of Electrical and Electronics Engineering, Ho Chi Minh City University of Technology and Education (HCMUTE), Vietnam. He earned his Ph.D. in Electrical Engineering from National Cheng Kung University (NCKU), Tainan, Taiwan. His research interests encompass power system stability, renewable energy conversion systems, microgrids, and FACTS devices.

Email: nhontd@hcmute.edu.vn. ORCID:  https://orcid.org/0000-0002-4015-6769

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Tải xuống

Đã Xuất bản

2025-09-18

Cách trích dẫn

[1]
G.-T. Tang và D.-N. Truong, “Enhanced Monthly Load Forecasting With RapidMiner-Based Deep Learning: VERSION OF RECORD ONLINE: 18/09/2025”, JTE, tháng 9 2025.

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