SYAILGMLApr 11, 2025

Optimizing Power Grid Topologies with Reinforcement Learning: A Survey of Methods and Challenges

arXiv:2504.08210v29 citationsh-index: 25
Originality Synthesis-oriented
AI Analysis

This is an incremental survey that consolidates existing research for researchers and practitioners in power grid optimization.

This survey tackles the problem of optimizing power grid topologies using reinforcement learning (RL) by providing a comprehensive overview of methods, including a comparative numerical study to evaluate their practical effectiveness.

Power grid operation is becoming increasingly complex due to the rising integration of renewable energy sources and the need for more adaptive control strategies. Reinforcement Learning (RL) has emerged as a promising approach to power network control (PNC), offering the potential to enhance decision-making in dynamic and uncertain environments. The Learning To Run a Power Network (L2RPN) competitions have played a key role in accelerating research by providing standardized benchmarks and problem formulations, leading to rapid advancements in RL-based methods. This survey provides a comprehensive and structured overview of RL applications for power grid topology optimization, categorizing existing techniques, highlighting key design choices, and identifying gaps in current research. Additionally, we present a comparative numerical study evaluating the impact of commonly applied RL-based methods, offering insights into their practical effectiveness. By consolidating existing research and outlining open challenges, this survey aims to provide a foundation for future advancements in RL-driven power grid optimization.

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