Forecasting Green Energy Production in Latin American Countries and Canada via Temporal Fusion Transformer

Author:

Saleem Muhammad Shoaib12,Rashid Javed34ORCID,Ahmad Sajjad1,Al‐Shaery Ali M.5,Althobaiti Saad6,Faheem Muhammad78

Affiliation:

1. Department of Mathematics University of Okara Okara Pakistan

2. Center for Theoretical Physics Khazar University Baku Azerbaijan

3. MLC Research Lab, Okara Okara Pakistan

4. Information Technology Services University of Okara Okara Pakistan

5. Department of Civil Engineering, College of Engineering and Architecture Umm Al‐Qura University Makkah Saudi Arabia

6. Department of Science and Technology, University College Ranyah Taif University Ranyah Saudi Arabia

7. School of Technology and Innovations University of Vaasa Vaasa Finland

8. VTT Technical Research Center of Finland Ltd. Espoo Finland

Abstract

ABSTRACTForecasting green energy is crucial in diminishing dependence on fossil fuels and fostering sustainable development. However, it encounters notable challenges, such as variable demand, restricted data availability, the integration of various datasets, and the necessity for precise long‐term projections. This study thoughtfully examines these issues using the temporal fusion transformer (TFT) model to project green energy production across five Latin American nations (Argentina, Brazil, Chile, Colombia, and Mexico) and Canada, drawing on data from 1965 to 2023. The performance of the proposed TFT is more authentic as compared with the gated recurrent unit (GRU), the long short‐term memory (LSTM), deep autoregression (DeepAR), and the meta graph‐based convolutional recurrent network (MegaCRN). The TFT has a mean square error (MSE) of 0.0003, root mean square error (RMSE) of 0.0173, mean absolute error (MAE) of 0.0112 and mean absolute percentage error (MAPE) of 1.76%. From the preceding results, it is clear that the proposed TFT model can identify dynamic energy patterns that will contribute towards achieving sustainable development goals by the end of 2040.

Publisher

Wiley

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5. “Let's Talk Science Generating Electricity: Hydroelectric Power ” accessed October 12 2024 https://letstalkscience.ca/educational-resources/stem-explained/generating-electricity-hydroelectric-power.

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