Federated Multi-Agent Deep Reinforcement Learning Approach via Physics-Informed Reward for Multi-Microgrid Energy Management
Yuanzheng Li, Shangyang He, Yang Li, Yang Shi, Zhigang Zeng

TL;DR
This paper introduces a federated multi-agent deep reinforcement learning approach with physics-informed rewards for multi-microgrid energy management, enhancing privacy, security, and efficiency in distributed renewable energy systems.
Contribution
It proposes a novel federated learning-based MADRL algorithm with physics-informed rewards, ensuring data privacy and security while optimizing energy management in multi-microgrid systems.
Findings
F-MADRL effectively reduces economic costs.
The approach maintains microgrid self-sufficiency.
Experimental results validate the method's superiority.
Abstract
The utilization of large-scale distributed renewable energy promotes the development of the multi-microgrid (MMG), which raises the need of developing an effective energy management method to minimize economic costs and keep self energy-sufficiency. The multi-agent deep reinforcement learning (MADRL) has been widely used for the energy management problem because of its real-time scheduling ability. However, its training requires massive energy operation data of microgrids (MGs), while gathering these data from different MGs would threaten their privacy and data security. Therefore, this paper tackles this practical yet challenging issue by proposing a federated multi-agent deep reinforcement learning (F-MADRL) algorithm via the physics-informed reward. In this algorithm, the federated learning (FL) mechanism is introduced to train the F-MADRL algorithm thus ensures the privacy and the…
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