A Stackelberg Game Optimization for Park-Level Integrated Energy Systems with CCS-P2G-LCES in Carbon-Green Certificate Markets
カーボン・グリーン証明書市場におけるCCS-P2G-LCESを備えたパークレベル統合エネルギーシステムのスタッケルベルグゲーム最適化 (AI 翻訳)
Liang Zhang, Shuyan Wu, Baoyuan Wang, Ling Lyu, Cheng Liu, Wenwei Zhu
🤖 gxceed AI 要約
日本語
本論文は、カーボン市場とグリーン証明書市場を統合した環境下で、CCS-P2G-LCES技術チェーンを備えるパークレベル統合エネルギーシステム(PIES)のStackelbergゲーム協調最適化戦略を提案する。統合エネルギーサービスプロバイダがリーダーとなり、ユーザー負荷集約事業者と電気自動車集約事業者をフォロワーとする枠組みで、差別化価格を通じて需要応答を誘導する。ケーススタディにより、運用収益の向上、ユーザーコスト削減、炭素排出削減、再生可能エネルギー消費率向上の効果が実証された。
English
This paper proposes a Stackelberg game-based collaborative optimization strategy for park-level integrated energy systems (PIES) operating in carbon and green certificate markets. It integrates a CCS-P2G-LCES technology chain to achieve internal carbon cycling and energy storage. The one-leader, multiple-follower framework optimizes dispatch with differentiated energy prices, enhancing revenue, reducing user costs, cutting carbon emissions, and improving renewable energy consumption rates. Case studies verify the feasibility and superiority of the approach.
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
本論文は、カーボン市場とグリーン証明書市場を組み合わせたパークレベル統合エネルギーシステムの最適化手法を提案しており、日本企業のGX投資や地域エネルギー管理に示唆を与える。特にCCS-P2G-LCES技術チェーンは日本のカーボンリサイクル戦略とも関連し、SSBJや有報における排出量削減計画の策定にも応用可能。
In the global GX context
This paper provides a novel multi-agent optimization framework for integrated energy systems that combines carbon markets, green certificates, and CCUS technology. It offers insights for designing carbon pricing mechanisms and energy policies globally, and demonstrates how market-based instruments can be coordinated with technical solutions to drive industrial decarbonization.
👥 読者別の含意
🔬研究者:Novel integration of Stackelberg game and CCS-P2G-LCES chain for multi-agent energy system optimization.
🏢実務担当者:Provides a dispatch model that can guide park-level energy management and demand response, useful for corporate energy managers.
🏛政策担当者:Illustrates how carbon and green certificate markets can be coordinated to enhance renewable integration and emission reduction at local energy system level.
📄 Abstract(原文)
This paper proposes a Stackelberg game-based collaborative optimization strategy for Park-Level Integrated Energy Systems (PIESs) operating in carbon and green certificate markets. The strategy addresses interest conflicts and low-carbon transition challenges in multi-agent optimization by integrating a carbon capture, power-to-gas, and liquid carbon dioxide energy storage technology chain. Innovatively integrates LCES into the CCS-P2G-LCES chain, achieving internal carbon cycling and energy storage. First, a market environment for PIESs integrating carbon trading and green certificate trading is constructed, and a deeply coupled low-carbon technology chain model of CCS-P2G-LCES is established to realize internal carbon resource cycling and energy time shifting. Second, a one-leader, multiple-follower Stackelberg game framework is developed with the Integrated Energy Service Provider (IESP) as the leader and the User Load Aggregator (ULA) and Electric Vehicle Aggregator (EVA) as followers. The IESP guides demand response on the user and electric vehicle sides by formulating differentiated energy prices. On this basis, a collaborative optimization dispatch model is constructed with the objective of maximizing the comprehensive revenue of the IESP. Finally, case study analysis verifies that the proposed method not only enhances operational revenue and reduces user energy costs, but also significantly reduces system carbon emissions and improves renewable energy consumption rates. The results demonstrate the feasibility and superiority of integrating market mechanisms, low-carbon technologies, and multi-agent game-based collaborative optimization.
🔗 Provenance — このレコードを発見したソース
- semanticscholar https://doi.org/10.3390/electronics15051088first seen 2026-05-15 17:16:55
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