首页> 外文会议>IEEE International Conference on Communications, Control, and Computing Technologies for Smart Grids >Reinforcement Learning Control Algorithm for a PV-Battery-System Providing Frequency Containment Reserve Power
【24h】

Reinforcement Learning Control Algorithm for a PV-Battery-System Providing Frequency Containment Reserve Power

机译:提供频率抑制储备功率的光伏电池系统的强化学习控制算法

获取原文

摘要

Rooftop-installed photovoltaic systems for residential buildings withbattery energy storage system are increasing. Controlling power flows of volatile and unpredictable renewable energy sources in such a system is challenging. Therefore, in this paper we present an algorithm based on Reinforcement Learning to control the power flows of a residential household with a battery energy storage system and a photovoltaic system using neural networks as a function approximation. In a nondeterministic environment the optimal choice of a series of actions to be taken is complex. Training a Reinforcement Learning algorithm, these complex patterns can be learned. The task of the energy storage is to reduce the energy feed-in to the electric grid as well as to improve power system stability by providing frequency containment reserve power to the transmission system operator. Our model includes the profiles of the grid's frequency, photovoltaic power generation and the electric load of two different households for one year. The first household is used to train the algorithm and to adjust the weights of the neural network to estimate the state-action values. The second household is used to test the functionality of the algorithm on unseen data. To evaluate the behavior of the Reinforcement Learning algorithm the results are compared to a simulation of rule-based control. As a result, after 300 episodes of training, the algorithm is able to reduce the energy consumption from the grid up to 7.8% compared to the rule-based control system managing the system's power flows.
机译:用于带有电池储能系统的住宅建筑物的屋顶安装的光伏系统正在增加。在这样的系统中控制挥发性和不可预测的可再生能源的功率流是具有挑战性的。因此,在本文中,我们提出了一种基于强化学习的算法,该算法使用神经网络作为函数逼近来控制具有电池储能系统和光伏系统的居民家庭的潮流。在不确定的环境中,要采取的一系列措施的最佳选择非常复杂。通过训练强化学习算法,可以学习这些复杂的模式。能量存储的任务是通过向输电系统操作员提供频率限制储备功率来减少向电网的能量馈送,并提高电力系统的稳定性。我们的模型包括一年内两个不同家庭的电网频率,光伏发电和电力负荷的概况。第一个家庭用于训练算法并调整神经网络的权重以估计状态作用值。第二个家庭用于在看不见的数据上测试算法的功能。为了评估强化学习算法的行为,将结果与基于规则的控制的仿真进行了比较。结果,经过300次训练后,与管理系统潮流的基于规则的控制系统相比,该算法能够将电网的能耗降低多达7.8%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号