Gao Guanyu, Wen Yonggang, Tao Dacheng
IEEE Trans Neural Netw Learn Syst. 2023 Dec;34(12):10638-10652. doi: 10.1109/TNNLS.2022.3170070. Epub 2023 Nov 30.
Renewable energy technologies empower microgrids to generate electricity to supply themselves and trade with others. Under this paradigm, microgrids have become autonomous entities that must intelligently determine their policies for energy trading and scheduling. Many factors influence a microgrid's decision-making, such as the complex microgrid infrastructure, the uncertain energy yield and demand, and the competition among the energy market players. These factors are usually hard to precisely model, and deriving the optimal policy for a microgrid is challenging. We propose a multiagent reinforcement learning (MARL) approach with an attention mechanism to learn the optimal policies for the microgrids without complex system modeling. We model each microgrid as an autonomous agent, which learns how to schedule energy resources and trade with others by collaborating with other agents. We adopt attention mechanism to enable intelligently selecting contextual information for the training of each agent. After training, an agent can make control decisions using only its local information, which can well preserve the microgrids' privacy and reduce the communication overhead among microgrids to facilitate distributed control. We implement a simulation environment and evaluate the performances of our proposed method using real-world datasets. The experimental results show that our method can significantly reduce the cost of the microgrids compared with the baseline methods.
可再生能源技术使微电网能够发电以供自身使用并与其他方进行交易。在这种模式下,微电网已成为自主实体,必须智能地确定其能源交易和调度策略。许多因素会影响微电网的决策,例如复杂的微电网基础设施、不确定的能源产量和需求,以及能源市场参与者之间的竞争。这些因素通常难以精确建模,为微电网推导最优策略具有挑战性。我们提出一种带有注意力机制的多智能体强化学习(MARL)方法,无需复杂的系统建模即可学习微电网的最优策略。我们将每个微电网建模为一个自主智能体,该智能体通过与其他智能体协作来学习如何调度能源资源并与其他方进行交易。我们采用注意力机制以便为每个智能体的训练智能地选择上下文信息。训练后,一个智能体仅使用其本地信息就能做出控制决策,这可以很好地保护微电网的隐私并减少微电网之间的通信开销,以促进分布式控制。我们实现了一个仿真环境,并使用真实世界数据集评估我们提出的方法的性能。实验结果表明,与基线方法相比,我们的方法可以显著降低微电网的成本。