Exploring Evolution and Trends: A Bibliometric Analysis and Scientific Mapping of Multiobjective Optimization Applied to Hybrid Microgrid Systems
Metadatos
Mostrar el registro completo del ítemEditorial
MDPI
Materia
renewable energy sources hybrid energy system microgrid
Fecha
2024-06-17Referencia bibliográfica
Arar Tahir, K. & Ordóñez, J. & Nieto, J. Sustainability 2024, 16, 5156. [https://doi.org/10.3390/su16125156]
Patrocinador
C-ING-288-UGR23 funded by Consejería de Universidad, Investigación e Innovación and by ERDF Andalusia Program 2021–2027; Wasit Province, IraqResumen
Hybrid energy systems (HESs) integrate renewable sources, storage, and optionally conventional
energies, offering a sustainable alternative to fossil fuels. Microgrids (MGs) bolster this
integration, enhancing energy management, resilience, and reliability across different levels. This
study, emphasizing the need for refined optimization methods, investigates three themes: renewable
energy, microgrid, and multiobjective optimization (MOO), through a bibliometric analysis of
470 Scopus documents from 2010 to 2023, analyzed using SciMAT v1.1.04 software. It segments the
research into two periods, 2010–2019 and 2020–2023, revealing a surge in MOO focus, particularly
in the latter period, with a 35% increase in MOO-related research. This indicates a shift toward
comprehensive energy ecosystem management that balances environmental, technical, and economic
elements. The initial focus on MOO, genetic algorithms, and energy management systems has expanded
to include smart grids and electric power systems, with MOO remaining a primary theme
in the second period. The increased application of artificial intelligence (AI) in optimizing HMGS
within the MOO framework signals a move toward more sustainable, intelligent energy solutions.
Despite progress, challenges remain, including high battery costs, the need for reliable MOO data,
the intermittency of renewable energy sources, and HMGS network scalability issues, highlighting
directions for future research.