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Microgrid Optimization with Metaheuristic Algorithms—A Review of Technologies and Trends for Sustainable Energy Systems

Author

Listed:
  • Ghassan Zubi

    (HyStandards GmbH, 82131 Gauting, Germany)

  • Sofoklis Makridis

    (Environmental Physics and Hydrogen Technologies Laboratory, Department of Sustainable Agriculture, GR31100, University of Patras, 30100 Patras, Greece
    Ae4ria Group, Sustainability Unit, Athena Research Centre, 15125 Athens, Greece)

Abstract

Microgrids are evolving from simple hybrid systems into complex, multi-energy platforms with high-dimensional optimization challenges due to technological diversification, sector coupling, and increased data granularity. This review systematically examines the intersection of microgrid optimization and metaheuristic algorithms, focusing on the period from 2015 to 2025. We first trace the technological evolution of microgrids and identify the drivers of increased optimization complexity. We then provide a structured overview of metaheuristic algorithms—including evolutionary, swarm intelligence, physics-based, and human-inspired approaches—and discuss their suitability for high-dimensional search spaces. Through a comparative analysis of case studies, we demonstrate that metaheuristics such as genetic algorithms, particle swarm optimization, and the gray wolf optimizer can reduce the computation time to under 10% of that required by an exhaustive search while effectively handling multimodal, constrained objectives. The review further highlights the growing role of hybrid algorithms and the need to incorporate uncertainty into optimization models. We conclude that future microgrid design will increasingly rely on adaptive and hybrid metaheuristics, supported by standardized benchmark problems, to navigate the growing dimensionality and ensure resilient, cost-effective, and sustainable systems. This work provides a roadmap for researchers and practitioners in selecting and developing optimization frameworks for the next generation of microgrids.

Suggested Citation

  • Ghassan Zubi & Sofoklis Makridis, 2026. "Microgrid Optimization with Metaheuristic Algorithms—A Review of Technologies and Trends for Sustainable Energy Systems," Sustainability, MDPI, vol. 18(2), pages 1-35, January.
  • Handle: RePEc:gam:jsusta:v:18:y:2026:i:2:p:647-:d:1835926
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