gxceed
← 論文一覧に戻る

Application of dynamic adjustment strategy of map service resources combined with reinforcement learning in power supply network visualization

動的調整戦略の応用:強化学習と組み合わせた地図サービスリソースの電力供給網可視化における活用 (AI 翻訳)

Meiying Z, Sida Z, Hao H

Research Squareプレプリント2026-05-08#エネルギー転換
DOI: 10.21203/rs.3.rs-8351834/v1
原典: https://doi.org/10.21203/rs.3.rs-8351834/v1

🤖 gxceed AI 要約

日本語

本論文は、再生可能エネルギーの統合や需要変動など、現代の電力網が直面する課題に対処するため、強化学習とトランスフォーマーネットワークを組み合わせた動的マップサービスリソース調整手法を提案する。FEDformerによる需要予測とGIS可視化ダッシュボードを統合し、グリッドの安定性と運用効率を向上させる。実験では、リソース利用率の改善とエネルギー損失の低減が確認された。

English

This paper proposes a dynamic map service resource adjustment method combining reinforcement learning and transformer networks to address challenges in modern power grids, such as renewable energy integration and variable demand. It integrates FEDformer forecasting and a GIS visualization dashboard to improve grid stability and operational efficiency. Experiments show improved resource utilization and reduced energy waste.

Unofficial AI-generated summary based on the public title and abstract. Not an official translation.

📝 gxceed 編集解説 — Why this matters

日本のGX文脈において

日本の電力網は再生可能エネルギーの大量導入に伴い需給調整が課題となっており、本論文の強化学習を用いた動的調整手法は、系統安定化に貢献する可能性がある。ただし、具体的なGX開示や政策との連動は弱い。

In the global GX context

The paper presents a technical solution for modernizing power grids with high renewable penetration, relevant to global energy transition efforts. While not directly addressing GX disclosure or climate policy, it contributes to operational efficiency and grid stability, key enablers for decarbonization.

👥 読者別の含意

🔬研究者:Demonstrates a novel integration of reinforcement learning and forecasting for grid resource optimization, offering a foundation for further research.

🏢実務担当者:Provides a visualization dashboard and dynamic adjustment framework that grid operators can use for real-time management and efficiency improvements.

📄 Abstract(原文)

<title>Abstract</title> <p>Decentralized generation, varying demand, and the integration of renewable energy sources are all posing challenges to conventional grid control systems, making modern power grids more complicated. Due to their inability to effectively handle dynamic and unexpected grid circumstances, these traditional systems—which are built on static rule-based methodologies create instability and inefficiency. The increased issues in power grid management brought on by dispersed renewable energy sources, variable system conditions, and rising energy demand are discussed in this study. Static rule-based optimization is the foundation of traditional power grid control systems, which find it difficult to adjust to these complicated and dynamic circumstances. A dynamic map service resource adjustment technique is put forth to get over these restrictions. It combines transformer networks with Reinforcement Learning (RL) to optimize power supply network control and boost overall efficiency. The strategy incorporates the FEDformer forecasting model, which makes precise predictions about future power demand and allows the system to react proactively to variations in energy output and consumption. In order to optimize power generation, distribution, and grid stability, a RL-based resource allocation technique is used to dynamically modify grid resources. In order to give operators a real-time picture of the grid, a GIS-based visualization dashboard is also created. It shows important metrics including resource distribution, grid status, and dynamic modifications performed by the RL agent. The suggested approach effectively combines geographic visualization, RL, and forecasting to maximize power grid management. The system's capacity to accurately forecast power demand, dynamically modify resources, and improve grid performance is demonstrated by the results, which also show notable gains in operational efficiency, stability, and resource utilization. Important measures like success rates and cumulative incentives show that the RL adjusts well to changing grid circumstances, maximizing grid performance and reducing energy waste.</p>

🔗 Provenance — このレコードを発見したソース

🔔 こうした論文の新着を逃したくない方は キーワードアラート に登録(無料・3キーワードまで)。

gxceed は公開メタデータに基づく研究支援データセットです。要約・翻訳・解説は AI 支援で生成されています。 最終的な解釈・検証は利用者が原典資料に基づいて行うことを前提とします。