Reinforcement Learning in Power System Control and Optimization

A. Bernadic, Goran Kujundžić, I. Primorac
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Abstract

Abstract Reinforcement learning (RL) is area of Machine Learning (ML) and part of wide-range portfolio of the Artificial intelligence (AI) methods. Besides the explanations of the concepts and principles of RL, in the paper are presented practical RL models for control and optimizing operation of power system – controlling tap-changers for maintain voltage levels and model for techno-economical optimizing operation of energy storages of households in microgrid. Trained RL agent in the practical example synchronizes operation of tap-changers to maintain satisfactory voltage level for the consumers, even in the network with distributed generation. Energy storages are in wide use in households, especially in the combination with PV. In the second example, microgrid’s energy management system (EMS) RL agent after learning process act in the simulated environment with variable electrical energy prices, variable load profiles and efficiency of PV modules of households to maximize profit for the houseowners in the microgrid. Agent controls charging and discharging of energy storages and obtain maximal benefit in randomly determined conditions of microgrid operation and different tariff situations. Models are implemented in the Python programming environment Python with specialized power system simulation software (Pandapower) and RL libraries (RLib, OpenAI).
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强化学习在电力系统控制与优化中的应用
强化学习(RL)是机器学习(ML)的一个领域,也是人工智能(AI)方法的广泛组合的一部分。本文在阐述RL的概念和原理的基础上,提出了电力系统控制和优化运行的实用RL模型——控制分接开关维持电压水平和微电网家庭储能的技术经济优化运行模型。在实例中,经过训练的RL代理能够同步分接开关的运行,即使在分布式发电网络中也能保持用户满意的电压水平。储能在家庭中得到了广泛的应用,特别是与光伏发电相结合。在第二个示例中,微电网的能源管理系统(EMS) RL agent经过学习过程后,在可变电价、可变负荷分布和家庭光伏模块效率的模拟环境中,为微电网中的业主实现利润最大化。Agent控制储能系统的充放电,在随机确定的微网运行条件和不同电价情况下获得最大效益。模型在Python编程环境Python中实现,使用专门的电力系统仿真软件(Pandapower)和RL库(RLib, OpenAI)。
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