Adaptive Control Using Machine Learning for Distributed Storage in Microgrids

Ramachandra Rao Kolluri, J. Hoog
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引用次数: 5

Abstract

The falling costs of solar photovoltaic systems and energy storage mean that these are being increasingly deployed in microgrids across the globe. Distributed storage can provide benefits for its owner, but can also play a key role in improving microgrid stability and resilience. However, most approaches to date assume that a central authority can control multiple nodes or households in the network. This introduces significant communication and control requirements, and may introduce points of failure. In this work we provide an initial exploration of how a machine learning model, trained on optimal control solutions, can be used locally at each node in the network to emulate a similar behaviour. The aim is for the trained model to provide benefits both for the individual energy storage owners, while also enabling community-level cooperative behaviour - all in a low communication-overhead, privacy-preserving manner. It is experimentally shown that a neural network trained on limited data from optimal schedules can learn node interactions and network characteristics, and can achieve partial voltage regulation for the entire microgrid. This can be done while still achieving a small (3%) network-wide cost savings compared to a scenario in which no distributed storage is present, can be implemented only locally, and does not introduce any significant requirements for central control and communication.
基于机器学习的微电网分布式存储自适应控制
太阳能光伏系统和储能成本的下降意味着这些系统正越来越多地部署在全球的微电网中。分布式存储可以为其所有者带来好处,但也可以在提高微电网稳定性和弹性方面发挥关键作用。然而,迄今为止,大多数方法都假设一个中央机构可以控制网络中的多个节点或家庭。这将引入重要的通信和控制需求,并可能引入故障点。在这项工作中,我们对如何在最优控制解决方案上训练的机器学习模型进行了初步探索,该模型可以在网络中的每个节点上本地使用,以模拟类似的行为。其目的是让经过训练的模型既为个人储能所有者提供好处,同时也使社区层面的合作行为成为可能——所有这些都是以低通信开销、保护隐私的方式进行的。实验结果表明,基于最优调度的有限数据训练的神经网络能够学习节点间的相互作用和网络特性,并能实现对整个微电网的局部电压调节。与不存在分布式存储、只能在本地实现、不引入中央控制和通信的任何重要需求的场景相比,这样做仍然可以实现很小的(3%)网络范围的成本节约。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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