Application of reinforcement learning in planning and operation of new power system towards carbon peaking and neutrality

IF 32 1区 工程技术 Q1 ENERGY & FUELS
Fangyuan Sun, Zhiwei Wang, Jun-hui Huang, R. Diao, Yingru Zhao, Tu Lan
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引用次数: 0

Abstract

To mitigate global climate change and ensure a sustainable energy future, China has launched a new energy policy of achieving carbon peaking by 2030 and carbon neutrality by 2060, which sets an ambitious goal of building NPS with high penetration of renewable energy. However, the strong uncertainty, nonlinearity, and intermittency of renewable generation and their power electronics-based control devices are imposing grand challenges for secure and economic planning and operation of the NPS. The performance of traditional methods and tools becomes rather limited under such phenomena. Together with high-fidelity modeling and high-performance simulation techniques, the fast development of AI technology, especially RL, provides a promising way of tackling these critical issues. This paper first provides a comprehensive overview of RL methods that interact with high-fidelity grid simulators to train effective agents for intelligent, model-free decision-making. Secondly, three important applications of RL are reviewed, including device-level control, system-level optimized control, and demand side management, with detailed modeling and procedures of solution explained. Finally, this paper discusses future research efforts for achieving the goals of full absorption of renewable energy, optimized allocation of large-scale energy resources, reliable supply of electricity, and secure and economic operation of the power grid.
强化学习在新电力系统碳调峰中和规划与运行中的应用
为了减缓全球气候变化,确保能源的可持续发展,中国推出了到2030年实现碳峰值、到2060年实现碳中和的新能源政策,制定了建设可再生能源高渗透率的核电厂的宏伟目标。然而,可再生能源发电及其电力电子控制装置的强不确定性、非线性和间歇性给NPS的安全、经济规划和运行带来了巨大挑战。在这种现象下,传统的方法和工具的性能变得相当有限。与高保真建模和高性能仿真技术一起,人工智能技术的快速发展,特别是强化学习,为解决这些关键问题提供了一种有希望的方法。本文首先全面概述了与高保真网格模拟器交互的强化学习方法,以训练有效的智能代理,无模型决策。其次,回顾了强化学习的三个重要应用,包括设备级控制、系统级优化控制和需求侧管理,并详细说明了建模和解决方法。最后,对实现可再生能源充分吸收、大规模能源资源优化配置、电力可靠供应、电网安全经济运行等目标的未来研究工作进行了探讨。
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来源期刊
Progress in Energy and Combustion Science
Progress in Energy and Combustion Science 工程技术-工程:化工
CiteScore
59.30
自引率
0.70%
发文量
44
审稿时长
3 months
期刊介绍: Progress in Energy and Combustion Science (PECS) publishes review articles covering all aspects of energy and combustion science. These articles offer a comprehensive, in-depth overview, evaluation, and discussion of specific topics. Given the importance of climate change and energy conservation, efficient combustion of fossil fuels and the development of sustainable energy systems are emphasized. Environmental protection requires limiting pollutants, including greenhouse gases, emitted from combustion and other energy-intensive systems. Additionally, combustion plays a vital role in process technology and materials science. PECS features articles authored by internationally recognized experts in combustion, flames, fuel science and technology, and sustainable energy solutions. Each volume includes specially commissioned review articles providing orderly and concise surveys and scientific discussions on various aspects of combustion and energy. While not overly lengthy, these articles allow authors to thoroughly and comprehensively explore their subjects. They serve as valuable resources for researchers seeking knowledge beyond their own fields and for students and engineers in government and industrial research seeking comprehensive reviews and practical solutions.
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