Optimization of Energy Storage Systems with Renewable Energy Generation and Consumption Data
Resource type
            
        Authors/contributors
                    - Filho, Edmilson Moreira Lima (Author)
 - Silveira, Aêdo Braga (Author)
 - Ferreira, Alexandre Marques (Author)
 - Lobo Marques, Joao Alexandre (Author)
 - Batista, Josias Guimarães (Author)
 - Guimarães, Glendo De Freitas (Author)
 - Alexandria, Auzuir Ripardo De (Author)
 - Rodrigues, Joel José Puga Coelho (Author)
 
Title
            Optimization of Energy Storage Systems with Renewable Energy Generation and Consumption Data
        Abstract
            This work provides a comprehensive systematic review of optimization techniques using artificial intelligence (AI) for energy storage systems within renewable energy setups. The primary goals are to evaluate the latest technologies employed in forecasting models for renewable energy generation, load forecasting, and energy storage systems, alongside their construction parameters and optimization methods. The review highlights the progress achieved, identifies current challenges, and explores future research directions. Despite the extensive application of machine learning (ML) and deep learning (DL) in renewable energy generation, consumption patterns, and storage optimization, few studies integrate these three aspects simultaneously, underscoring the significance of this work. The review encompasses studies from Web of Science, Scopus, and Science Direct up to December 2023, including works scheduled for publication in 2024. Each study related to renewable energy storage was individually analyzed to assess its objectives, methodology, and results. The findings reveal useful insights for developing AI models aimed at optimizing storage systems. However, critical areas need further exploration, such as real-time forecasting, long-term storage predictions, hybrid neural networks for demand-based generation forecasting, and the evaluation of various storage scales and battery technologies. The review also notes a significant gap in research on large-scale storage systems in Brazil and Latin America. In conclusion, the study emphasizes the need for continued research and the development of new algorithms to address existing limitations in the field.
        Date
            2024-11-06
        Proceedings Title
            2024 IEEE 7th Student Conference on Electric Machines and Systems (SCEMS)
        Conference Name
            2024 IEEE 7th Student Conference on Electric Machines and Systems (SCEMS)
        Publisher
            IEEE
        Language
            en
        Accessed
            4/9/25, 5:49 AM
        Library Catalog
            dspace.usj.edu.mo
        Citation
            Filho, E. M. L., Silveira, A. B., Ferreira, A. M., Lobo Marques, J. A., Batista, J. G., Guimarães, G. D. F., Alexandria, A. R. D., & Rodrigues, J. J. P. C. (2024, November 6). Optimization of Energy Storage Systems with Renewable Energy Generation and Consumption Data. 2024 IEEE 7th Student Conference on Electric Machines and Systems (SCEMS). 2024 IEEE 7th Student Conference on Electric Machines and Systems (SCEMS). https://doi.org/10.1109/SCEMS63294.2024.10756498
                Academic Units
            
            
        Link to this record