Q-learning Method for Managing Wind Farm Uncertainties through Energy Storage System Control

Zhimei Song, C. Zang, Lizhong Zhu, P. Zeng
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Abstract

In this paper, We are committed to improving the revenue of wind farm when wind farm and energy storage system (ESS) cooperate and interact with the main grid. The main challenge is the uncertainty of wind power generation (WPG). Based on WPG forecasting, the reinforcement learning (RL) method is used to overcome the impact of WPG uncertainty. The (RL) method used is classic Q-learning. Compared with other (RL) methods, Q-learning is widely applied and easy to converge. Especially, (RL) methods can realize online decision-making, and the decision-making will tend to be optimal. The simulation results show that the method in this paper can effectively reduce the uncertainty of WPG and increase the revenue of wind farms.
通过储能系统控制管理风电场不确定性的q -学习方法
在本文中,我们致力于在风电场和储能系统(ESS)与主电网合作和交互时提高风电场的收益。主要挑战是风力发电(WPG)的不确定性。在WPG预测的基础上,采用强化学习方法克服WPG不确定性的影响。使用的(RL)方法是经典的Q-learning。与其他RL方法相比,q学习具有应用广泛、易于收敛的特点。特别是(RL)方法可以实现在线决策,并且决策将趋于最优。仿真结果表明,本文方法能有效降低WPG的不确定性,提高风电场收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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