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Long Short-Term Renewable Energy Sources Prediction for Grid-Management Systems Based on Stacking Ensemble Model

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  • Wiem Fekih Hassen

    (Distributed Information Systems, University of Passau, Innstraße 41, 94032 Passau, Germany)

  • Maher Challouf

    (Distributed Information Systems, University of Passau, Innstraße 41, 94032 Passau, Germany)

Abstract

The transition towards sustainable energy systems necessitates effective management of renewable energy sources alongside conventional grid infrastructure. This paper presents a comprehensive approach to optimizing grid management by integrating Photovoltaic (PV), wind, and grid energies to minimize costs and enhance sustainability. A key focus lies in developing an accurate scheduling algorithm utilizing Mixed Integer Programming (MIP), enabling dynamic allocation of energy resources to meet demand while minimizing reliance on cost-intensive grid energy. An ensemble learning technique, specifically a stacking algorithm, is employed to construct a robust forecasting pipeline for PV and wind energy generation. The forecasting model achieves remarkable accuracy with a Root Mean Squared Error (RMSE) of less than 0.1 for short-term (15 min and one day ahead) and long-term (one week and one month ahead) predictions. By combining optimization and forecasting methodologies, this research contributes to advancing grid management systems capable of harnessing renewable energy sources efficiently, thus facilitating cost savings and fostering sustainability in the energy sector.

Suggested Citation

  • Wiem Fekih Hassen & Maher Challouf, 2024. "Long Short-Term Renewable Energy Sources Prediction for Grid-Management Systems Based on Stacking Ensemble Model," Energies, MDPI, vol. 17(13), pages 1-19, June.
  • Handle: RePEc:gam:jeners:v:17:y:2024:i:13:p:3145-:d:1422280
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    References listed on IDEAS

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