With large-scale integration of renewable generation and ubiquitous distributed energy resources (DERs), modern power systems confront a series of new challenges in operation and control, such as growing complexity, increasing uncertainty, and aggravating volatility. While the upside is that more and more data are available owing to the widely-deployed smart meters, smart sensors, and upgraded communication networks. As a result, data-driven control techniques, especially reinforcement learning (RL), have attracted surging attention in recent years. In this paper, we focus on RL and aim to provide a tutorial on various RL techniques and how they can be applied to the decision-making and control in power systems. In particular, we select three key applications, including frequency regulation, voltage control, and energy management, for illustration, and present the typical ways to model and tackle them with RL methods. We conclude by emphasizing two critical issues in the application of RL, i.e., safety and scalability. Several potential future directions are discussed as well.
翻译:随着可再生能源和分布无处不在的能源资源的大规模整合,现代电力系统在操作和控制方面面临着一系列新的挑战,例如日益复杂、日益不确定和波动性加剧等,虽然好处在于由于广泛部署的智能仪、智能传感器和升级的通信网络,数据驱动的控制技术,特别是强化学习,近年来引起越来越多的关注。在本文件中,我们侧重于可再生能源,目的是就各种可再生能源技术以及这些技术如何应用于电力系统的决策和控制提供辅导。特别是,我们选择了三种关键应用,包括频率调控、电压控制和能源管理,以图解,并提出了典型的模型方法,以RL方法解决这些问题。我们最后强调应用RL的两个关键问题,即安全和可扩展性。我们还讨论了若干潜在的未来方向。