LLM-Enhanced Multi-Agent Reinforcement Learning with Expert Workflow for Real-Time P2P Energy Trading
Chengwei Lou, Zekai Jin, Wei Tang, Guangfei Geng, Jin Yang, and Lu Zhang

TL;DR
This paper introduces an LLM-enhanced multi-agent reinforcement learning framework for real-time P2P energy trading, leveraging expert guidance to improve decision-making, scalability, and economic efficiency in decentralized electricity markets.
Contribution
It presents a novel integration of large language models as expert generators within MARL, employing a differential attention critic to improve scalability and convergence in P2P energy trading.
Findings
Strategies generated by LLMs match expert performance.
The proposed algorithms reduce economic costs and voltage violations.
The framework maintains robust stability in large-scale P2P networks.
Abstract
Real-time peer-to-peer (P2P) electricity markets dynamically adapt to fluctuations in renewable energy and variations in demand, maximizing economic benefits through instantaneous price responses while enhancing grid flexibility. However, scaling expert guidance for massive personalized prosumers poses critical challenges, including diverse decision-making demands and a lack of customized modeling frameworks. This paper proposes an integrated large language model-multi-agent reinforcement learning (LLM-MARL) framework for real-time P2P energy trading to address challenges such as the limited technical capability of prosumers, the lack of expert experience, and security issues of distribution networks. LLMs are introduced as experts to generate personalized strategies, guiding MARL under the centralized training with decentralized execution (CTDE) paradigm through imitation. To handle…
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