Hierarchical Reinforcement Learning for Power Network Topology Control
Blazej Manczak, Jan Viebahn, Herke van Hoof

TL;DR
This paper introduces a hierarchical reinforcement learning framework for power network topology control, effectively managing high-dimensional action spaces and improving control performance on complex grid management tasks.
Contribution
The paper proposes a novel three-level HRL framework for power network control, combining rule-based, RL, and greedy policies across different abstraction levels.
Findings
Hierarchical RL agents outperform baseline methods on complex tasks
RL at intermediate and lowest levels yields best performance
Framework effectively manages high-dimensional action spaces in power networks
Abstract
Learning in high-dimensional action spaces is a key challenge in applying reinforcement learning (RL) to real-world systems. In this paper, we study the possibility of controlling power networks using RL methods. Power networks are critical infrastructures that are complex to control. In particular, the combinatorial nature of the action space poses a challenge to both conventional optimizers and learned controllers. Hierarchical reinforcement learning (HRL) represents one approach to address this challenge. More precisely, a HRL framework for power network topology control is proposed. The HRL framework consists of three levels of action abstraction. At the highest level, there is the overall long-term task of power network operation, namely, keeping the power grid state within security constraints at all times, which is decomposed into two temporally extended actions: 'do nothing'…
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Taxonomy
TopicsSmart Grid Security and Resilience
