SYAIJan 17, 2024

Blackout Mitigation via Physics-guided RL

arXiv:2401.09640v24 citationsh-index: 23Has CodeIEEE Transactions on Power Systems
AI Analysis

This addresses blackout mitigation for power grid operators, representing an incremental improvement by integrating physical signals into RL.

The paper tackles the problem of preventing blackouts by designing a physics-guided reinforcement learning framework to sequence remedial control actions like line-switching and generator adjustments, demonstrating notable advantages over black-box methods in empirical evaluations.

This paper considers the sequential design of remedial control actions in response to system anomalies for the ultimate objective of preventing blackouts. A physics-guided reinforcement learning (RL) framework is designed to identify effective sequences of real-time remedial look-ahead decisions accounting for the long-term impact on the system's stability. The paper considers a space of control actions that involve both discrete-valued transmission line-switching decisions (line reconnections and removals) and continuous-valued generator adjustments. To identify an effective blackout mitigation policy, a physics-guided approach is designed that uses power-flow sensitivity factors associated with the power transmission network to guide the RL exploration during agent training. Comprehensive empirical evaluations using the open-source Grid2Op platform demonstrate the notable advantages of incorporating physical signals into RL decisions, establishing the gains of the proposed physics-guided approach compared to its black box counterparts. One important observation is that strategically~\emph{removing} transmission lines, in conjunction with multiple real-time generator adjustments, often renders effective long-term decisions that are likely to prevent or delay blackouts.

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