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A Survey on Deep Reinforcement Learning Approaches for Power System Control and Optimizationopen access심층 강화학습 기반 전력 시스템 제어 및 최적화 연구

Other Titles
심층 강화학습 기반 전력 시스템 제어 및 최적화 연구
Authors
Zhang, HaotianWang, ChenLee, MinjuLee, Myoung HoonMoon, Jun
Issue Date
Jun-2025
Publisher
대한전기학회
Keywords
Deep reinforcement learning; emergency load shedding; energy dispatch; topology control
Citation
전기학회논문지, v.74, no.6, pp 1041 - 1057
Pages
17
Indexed
SCOPUS
KCI
Journal Title
전기학회논문지
Volume
74
Number
6
Start Page
1041
End Page
1057
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/207987
DOI
10.5370/KIEE.2025.74.6.1041
ISSN
1975-8359
2287-4364
Abstract
With the increasing complexity of modern power systems due to the access of large-scale renewable energy sources, minimizing operational costs while achieving stable grid operation has become a core challenge in power scheduling and optimization. Energy dispatch, topology control and emergency load shedding are key measures to improve power system stability and flexibility. However, the outputs of their traditional control policies rely on predefined rules or mathematical optimization models, which are prone to computational bottlenecks and response lags in high-dimensional dynamic environments, making it difficult to meet the demands of smart grids. In recent years, deep reinforcement learning (DRL) has gradually become a cutting-edge technology for power system scheduling and control by virtue of its powerful adaptive learning and decision optimization capabilities. According to the existing research, DRL can improve the flexibility and anti-interference ability of the power grid by learning the optimal policies through autonomous interaction, surpassing the real-time decision-making ability of traditional optimization methods in high-dimensional state space. In this paper, we systematically review the applications of DRL in energy dispatch, topology control and emergency load shedding, focus on its optimization policies, technological breakthroughs and applicability, and analyze the current challenges and future research directions.
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