Renewable energy integration and microgrid energy trading using multi-agent deep reinforcement learning
Daniel J. B. Harrold, Jun Cao, Zhong Fan

TL;DR
This paper presents a multi-agent deep reinforcement learning approach for controlling hybrid energy storage in microgrids to optimize renewable energy use and trading, demonstrating improved performance over single-agent control and benefits of energy trading.
Contribution
It introduces a multi-agent reinforcement learning framework with decentralized execution for microgrid energy management, including energy trading, outperforming single-agent methods.
Findings
Multi-agent methods outperform single-agent control.
Separate reward functions improve performance.
Energy trading increases microgrid savings.
Abstract
In this paper, multi-agent reinforcement learning is used to control a hybrid energy storage system working collaboratively to reduce the energy costs of a microgrid through maximising the value of renewable energy and trading. The agents must learn to control three different types of energy storage system suited for short, medium, and long-term storage under fluctuating demand, dynamic wholesale energy prices, and unpredictable renewable energy generation. Two case studies are considered: the first looking at how the energy storage systems can better integrate renewable energy generation under dynamic pricing, and the second with how those same agents can be used alongside an aggregator agent to sell energy to self-interested external microgrids looking to reduce their own energy bills. This work found that the centralised learning with decentralised execution of the multi-agent deep…
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Taxonomy
TopicsMicrogrid Control and Optimization · Smart Grid Energy Management · Frequency Control in Power Systems
