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Partially Observable Residual Reinforcement Learning for PV-Inverter-Based Voltage Control in Distribution Grids

Partially Observable Residual Reinforcement Learning for PV-Inverter-Based Voltage Control in Distribution Grids

来源:Arxiv_logoArxiv
英文摘要

This paper introduces an efficient Residual Reinforcement Learning (RRL) framework for voltage control in active distribution grids. Voltage control remains a critical challenge in distribution grids, where conventional Reinforcement Learning (RL) methods often suffer from slow training convergence and inefficient exploration. To overcome these challenges, the proposed RRL approach learns a residual policy on top of a modified Sequential Droop Control (SDC) mechanism, ensuring faster convergence. Additionally, the framework introduces a Local Shared Linear (LSL) architecture for the Q-network and a Transformer-Encoder actor network, which collectively enhance overall performance. Unlike several existing approaches, the proposed method relies solely on inverters' measurements without requiring full state information of the power grid, rendering it more practical for real-world deployment. Simulation results validate the effectiveness of the RRL framework in achieving rapid convergence, minimizing active power curtailment, and ensuring reliable voltage regulation.

Sarra Bouchkati、Ramil Sabirov、Steffen Kortmann、Andreas Ulbig

输配电工程

Sarra Bouchkati,Ramil Sabirov,Steffen Kortmann,Andreas Ulbig.Partially Observable Residual Reinforcement Learning for PV-Inverter-Based Voltage Control in Distribution Grids[EB/OL].(2025-06-24)[2025-07-16].https://arxiv.org/abs/2506.19353.点此复制

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