基于深度强化学习的变电站拓扑和线路交换控制

Rajarshi Roychowdhury, John B. Ocampo, Balaji Guddanti, M. Illindala
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引用次数: 1

摘要

电力系统(EPS)被广泛认为是有史以来最复杂的人工系统之一。随着近年来分布式能源的普及,控制电力系统变得更加具有挑战性。本文介绍了使用Dueling DQN (DDQN)强化学习算法来控制EPS的线路切换和变电站拓扑,以在所有突发情况下保持线路流量在限制范围内。DDQN算法特别适用于电力系统,因为通常情况下,环境状态可能不会受到代理行为的广泛影响,特别是在正常运行条件下。这使得DDQN代理可以快速学习不重要的状态——这是传统深度Q网络的一个明显优势。在EPS的实时控制中,不学习所有冗余状态具有快速收敛和减少训练时间的优点,这在研究的复杂用例中都是非常理想的。DDQN算法在标准IEEE 14总线系统上进行了测试,agent在各种电网运行场景下都能保持系统的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Substation Topology and Line Switching Control Using Deep Reinforcement Learning
Electric Power System (EPS) is widely regarded as one of the most complex artificial systems ever created. With the recent penetration of distributed energy resources, controlling the power systems is becoming even more challenging. This paper presents the use of the Dueling DQN (DDQN) Reinforcement Learning algorithm to control line switching and substation topology of the EPS to maintain line flow within limits for all contingency scenarios. The DDQN algorithm is particularly suited in power systems as often, the state of the environment might not be widely affected due to an agent’s actions, particularly during normal operating conditions. This allows the DDQN agent to quickly learn the states that are not important - a definite advantage over traditional vanilla Deep Q Networks. In the case of real-time control of the EPS, not learning all the redundant states has the advantage of fast convergence and reduced training time, both highly desirable in a complex use case like the one studied. The DDQN algorithm was tested on the standard IEEE 14 bus system, and the agent managed to maintain system stability under varied grid operating scenarios.
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