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arxiv 2407.15165 v1 pith:QSHFVYOK submitted 2024-07-21 physics.soc-ph cs.SYeess.SYnlin.AO

Reinforcement Learning Optimizes Power Dispatch in Decentralized Power Grid

classification physics.soc-ph cs.SYeess.SYnlin.AO
keywords powergc-ppogriddispatchfrequencyacrossapplyingbecome
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Effective frequency control in power grids has become increasingly important with the increasing demand for renewable energy sources. Here, we propose a novel strategy for resolving this challenge using graph convolutional proximal policy optimization (GC-PPO). The GC-PPO method can optimally determine how much power individual buses dispatch to reduce frequency fluctuations across a power grid. We demonstrate its efficacy in controlling disturbances by applying the GC-PPO to the power grid of the UK. The performance of GC-PPO is outstanding compared to the classical methods. This result highlights the promising role of GC-PPO in enhancing the stability and reliability of power systems by switching lines or decentralizing grid topology.

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