| Full text | |
| Author(s): |
Albuquerque, Mateus Vasconcelos
;
Casaca, Wallace
Total Authors: 2
|
| Document type: | Journal article |
| Source: | COMPUTATIONAL SCIENCE AND ITS APPLICATIONS-ICCSA 2025, PT III; v. 15650, p. 18-pg., 2025-01-01. |
| Abstract | |
The transition to renewable energy sources has generated increased interest in accurate forecasting methods for green hydrogen production. This work aims to predict green hydrogen production from solar energy generation using machine and deep learning models. The proposed approach includes data preprocessing from different sites, implementing AI-driven techniques, running hyperparameter optimization, and extrapolating these parameters for training with real data from other sites. In addition, the Time Delay Embedding technique is applied to capture the temporal dependencies of the data for supervised learning. The methods Random Forest, Support Vector Regression, Extreme Gradient Boosting, and Long Short-Term Memory are trained and properly tuned. The results demonstrate that Extreme Gradient Boosting model achieves the highest accuracy, with all models adapting well to data from the distinct stations analyzed. The extrapolation of optimized hyperparameters proved efficient, reducing computational costs without compromising accuracy. In conclusion, the proposed approach is robust and viable for predicting the production of green hydrogen at different locations, making it a scalable solution for supporting clean energy planning. (AU) | |
| FAPESP's process: | 23/14427-8 - Data Science for Smart Industry (CDII) |
| Grantee: | José Alberto Cuminato |
| Support Opportunities: | Research Grants - Applied Research Centers Program |
| FAPESP's process: | 13/07375-0 - CeMEAI - Center for Mathematical Sciences Applied to Industry |
| Grantee: | Francisco Louzada Neto |
| Support Opportunities: | Research Grants - Research, Innovation and Dissemination Centers - RIDC |