微电网控制的深度强化学习研究进展

Muhammad Waheed ul Hassan, Engr. Dr. Muhammad Farhan, Z. Ahmed, Toseef Abid, Muhammad Azeem Iqbal, Muhammad Saqib Ashraf
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引用次数: 0

摘要

微电网作为一种增强分布式电力系统弹性和性能的突出解决方案被广泛接受。微电网可以灵活地在电网生态系统中添加分布式能源。由于分布式能源的湍流特性,控制技术被用于同步分布式能源。包括交流、直流和混合负载存储系统在内的分布式电源在微电网中的应用非常频繁,因此用传统的控制方法控制微电网中的能量流是一项复杂的任务。分布式和集中式控制算法的应用是众所周知的微电网频率和电压调节方法。近年来,基于人工智能的技术正在应用于新一代微电网和智能电网的运行和控制问题。这些技术在广义上分为机器学习和深度学习。本研究的目的是研究利用深度强化学习方法(DRL)控制微电网的最新策略。其他人工智能技术已经得到了广泛的审查,但在过去几年中,DRL的使用有所增加。为了弥补研究人员的差距,本调查论文的重点是微电网控制DRL技术,该技术采用分布式、协作和多智能体方法进行电压控制和频率调节。
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Deep Reinforcement Learning for Control of Microgrids: A Review
A microgrid is widely accepted as a prominent solution to enhance resilience and performance in distributed power systems. Microgrids are flexible for adding distributed energy resources in the ecosystem of the electrical networks. Control techniques are used to synchronize distributed energy resources (DERs) due to their turbulent nature. DERs including alternating current, direct current and hybrid load with storage systems have been used in microgrids quite frequently due to which controlling the flow of energy in microgrids have been complex task with traditional control approaches. Distributed as well central approach to apply control algorithms is well-known methods to regulate frequency and voltage in microgrids. Recently techniques based of artificial intelligence are being applied for the problems that arise in operation and control of latest generation microgrids and smart grids. Such techniques are categorized in machine learning and deep learning in broader terms. The objective of this research is to survey the latest strategies of control in microgrids using the deep reinforcement learning approach (DRL). Other techniques of artificial intelligence had already been reviewed extensively but the use of DRL has increased in the past couple of years. To bridge the gap for the researchers, this survey paper is being presented with a focus on only Microgrids control DRL techniques for voltage control and frequency regulation with distributed, cooperative and multi agent approaches are presented in this research.
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