Paper Details

Abstract

The transition towards net-zero smart cities required complex and agile energy forecasting models to manage nonlinear energy consumption patterns and incorporate data from various sources in real-time. AI has emerged as a transformative tool in this domain, leveraging Deep Learning techniques to provide highly accurate and adaptive energy predictions. This study proposed two hybrid deep learning architectures combining CNN for short-term feature extraction, LSTM for long-range temporal modeling, with an Attention mechanism for dynamic time-step weighting to enhance predictive performance in both single-step and multi-step energy forecasting. Evaluated on the ENTSO-E dataset, the proposed CNN-LSTM-Att architectures significantly outperformed other baselines, with CNN-LSTM-Att.v2 achieving the best single-step forecasting results with RMSE of 106.96 MW, reducing MAPE to 1.07%, and CNN-LSTM-Att.v1 achieving the best multi-step day-ahead forecasting results with RMSE of 438.11 MW and reducing MAPE to 4.18%. These experimental results highlighted the importance of spatial-temporal feature extraction and attention-driven modeling in delivering robust forecasts for sustainable urban energy management.

Keywords
attention mechanism energy forecasting net-zero cities hybrid deep learning architectures
Contact Information
Minh Anh Hoang (Corresponding Author)
Computer Science Department, Swinburne University Vietnam, FPT University, HCM City, Vietnam, Vietnam
0944657599

All Authors (4)

Minh Anh Hoang C

Affiliation: Computer Science Department, Swinburne University Vietnam, FPT University, HCM City, Vietnam

Country: Vietnam

Email: minhha10@fe.edu.vn

Phone: 0944657599

Thuan Do Thanh Hoang

Affiliation: Department of Information Technology Specialization, FPT University, HCM City, Vietnam

Country: Vietnam

Email: thuanhdtde180739@fpt.edu.vn

Phone: 0969219406

Tuan Phu Phan

Affiliation: Department of Information Technology Specialization, FPT University, HCM City, Vietnam

Country: Vietnam

Email: tuanppse181658@fpt.edu.vn

Phone: 0967273784

Khuong Nguyen-Vinh

Affiliation: School of Science, Engineering and Technology, RMIT University, HCM City, Vietnam

Country: Vietnam

Email: khuong.nguyenvinh@rmit.edu.vn

Phone: 0935505753