TL;DR
This paper introduces a novel temporal prototype-aware learning method for active voltage control in power distribution networks, enabling adaptive, long-term effective control amidst dynamic load and renewable energy variations.
Contribution
The paper proposes a new TPA method with multi-scale temporal encoding and prototype matching, enhancing adaptability and transferability of MARL-based AVC strategies.
Findings
TPA outperforms existing methods in control accuracy.
TPA demonstrates strong transferability across different PDN sizes.
Experimental results validate the effectiveness of the proposed approach.
Abstract
Active Voltage Control (AVC) on the Power Distribution Networks (PDNs) aims to stabilize the voltage levels to ensure efficient and reliable operation of power systems. With the increasing integration of distributed energy resources, recent efforts have explored employing multi-agent reinforcement learning (MARL) techniques to realize effective AVC. Existing methods mainly focus on the acquisition of short-term AVC strategies, i.e., only learning AVC within the short-term training trajectories of a singular diurnal cycle. However, due to the dynamic nature of load demands and renewable energy, the operation states of real-world PDNs may exhibit significant distribution shifts across varying timescales (e.g., daily and seasonal changes). This can render those short-term strategies suboptimal or even obsolete when performing continuous AVC over extended periods. In this paper, we propose…
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