TY - JOUR
T1 - Systematic Review of Hierarchical and Multi-Agent Optimization Strategies for P2P Energy Management and Electric Machines in Microgrids
AU - Arévalo, Paul
AU - Ochoa Correa, Danny Vinicio
AU - Villa Avila, Edisson Andres
AU - Iñiguez-Morán, Vinicio
AU - Astudillo Salinas, Patricio Alcides
N1 - Publisher Copyright:
© 2025 by the authors.
PY - 2025/4/26
Y1 - 2025/4/26
N2 - The growing complexity of distributed energy systems and the rise of peer-to-peer energy markets demand innovative solutions for efficient, resilient, and sustainable energy management. However, existing research often remains fragmented, with limited integration between control strategies, optimization frameworks, and practical implementation. This paper presents a comprehensive systematic review, following the PRISMA methodology, that synthesizes findings from 94 high-quality studies and addresses the lack of consolidated insights across technical, operational, and architectural layers. This review highlights advancements in six key areas: optimization and modeling, multi-agent systems, simulations, blockchain and smart contracts, robust frameworks, and electric machines. Despite progress, several studies reveal challenges related to scalability, data privacy, computational complexity, and system adaptability, particularly in dynamic and decentralized environments. Stochastic–robust optimization and multi-agent systems improve decentralized coordination, while blockchain enhances security and automation in peer-to-peer trading. Simulations validate energy strategies, bridging theory and practice, and electric machines support renewable integration and grid flexibility. The synthesis underscores the need for unified frameworks that combine artificial intelligence, predictive control, and secure communication protocols. This review aims to provide a roadmap for advancing distributed energy systems toward scalable, resilient, and sustainable energy solutions.
AB - The growing complexity of distributed energy systems and the rise of peer-to-peer energy markets demand innovative solutions for efficient, resilient, and sustainable energy management. However, existing research often remains fragmented, with limited integration between control strategies, optimization frameworks, and practical implementation. This paper presents a comprehensive systematic review, following the PRISMA methodology, that synthesizes findings from 94 high-quality studies and addresses the lack of consolidated insights across technical, operational, and architectural layers. This review highlights advancements in six key areas: optimization and modeling, multi-agent systems, simulations, blockchain and smart contracts, robust frameworks, and electric machines. Despite progress, several studies reveal challenges related to scalability, data privacy, computational complexity, and system adaptability, particularly in dynamic and decentralized environments. Stochastic–robust optimization and multi-agent systems improve decentralized coordination, while blockchain enhances security and automation in peer-to-peer trading. Simulations validate energy strategies, bridging theory and practice, and electric machines support renewable integration and grid flexibility. The synthesis underscores the need for unified frameworks that combine artificial intelligence, predictive control, and secure communication protocols. This review aims to provide a roadmap for advancing distributed energy systems toward scalable, resilient, and sustainable energy solutions.
KW - blockchain
KW - electric machines
KW - energy management
KW - microgrids
KW - multi-agent optimization
KW - robust control
KW - systematic literature review
KW - Emerging Trends in Energy Management
KW - Techniques, Applications and Future Directions)
KW - Robust control
KW - Systematic literature review
UR - https://www.mdpi.com/2076-3417/15/9/4817
U2 - 10.3390/app15094817
DO - 10.3390/app15094817
M3 - Artículo de revisión
SN - 2076-3417
VL - 15
SP - 1
EP - 42
JO - Applied Sciences
JF - Applied Sciences
IS - 9
M1 - 4817
ER -