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Recent Trends and Issues of Energy Management Systems Using Machine Learning

Seongwoo Lee, Joonho Seon, Byung-Sun Hwang, Soo Hyun Kim, Young Ghyu Sun, Jin‐Young Kim

2024Energies38 citationsDOIOpen Access PDF

Abstract

Energy management systems (EMSs) are regarded as essential components within smart grids. In pursuit of efficiency, reliability, stability, and sustainability, an integrated EMS empowered by machine learning (ML) has been addressed as a promising solution. A comprehensive review of current literature and trends has been conducted with a focus on key areas, such as distributed energy resources, energy management information systems, energy storage systems, energy trading risk management systems, demand-side management systems, grid automation, and self-healing systems. The application of ML in EMS is discussed, highlighting enhancements in data analytics, improvements in system stability, facilitation of efficient energy distribution and optimization of energy flow. Moreover, architectural frameworks, operational constraints, and challenging issues in ML-based EMS are explored by focusing on its effectiveness, efficiency, and suitability. This paper is intended to provide valuable insights into the future of EMS.

Topics & Concepts

Computer scienceEnergy managementEnergy (signal processing)Industrial engineeringEngineeringMathematicsStatisticsSmart Grid Energy ManagementMicrogrid Control and OptimizationSmart Grid Security and Resilience