在Python中开发用于微电网能源管理的强化学习模型

M. K. Perera, K. Hemapala, W. Wijayapala
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引用次数: 0

摘要

微电网为分布式发电提供了集成平台。因此,对微电网的持续控制和监测对于平衡可再生能源发电带来的电力波动、间歇性等至关重要。基于智能体的分布式控制系统被引入到微电网控制中。将强化学习与动力系统相结合,为系统中的智能体引入学习能力是一种新颖的方法。本文重点讨论了如何确定强化学习对某些优化问题的适用性,以及如何将问题映射到一般的强化学习模型。应用强化学习的目标是最小化微电网对主网的依赖,同时确保最大限度地利用可再生能源发电。该能源管理模型使用环境和代理类建模,并使用python编程进行仿真。此外,提出了一种人工神经网络用于可再生能源发电预测,并将其馈送到Q学习算法中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a Reinforcement Learning model for energy management of microgrids in Python
Microgrids provide integrating platforms for distributed generating sources. Therefore, continuous controlling and monitoring of the microgrids are essential to balance power fluctuations, intermittency, etc. that are introduced by renewable generation sources. Agent-based distributed control systems have been introduced for microgrid control. As a novel approach learning ability is introduced to the agents in the system with the integration of reinforcement learning with power systems. This paper highlights how to determine the applicability of reinforcement learning for certain optimization problems together with problem mapping to the general reinforcement learning model. The goal of the application of reinforcement learning is to minimize the dependency of the microgrid on main grid while ensuring the maximum utilization of renewable energy generation. This energy management model is simulated using environment and agent class modelling using python programming. In addition to that, an artificial neural network is proposed for renewable generation forecasting to feed to the Q learning algorithm.
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