Research on Reactive Voltage Optimization of Multi-DC Sending Power Grid Based on Reinforcement Learning

Hong Zhou, Shaorong Cai, Sicong Yu, Jianliang Gao, Li Jiang, Liang Lu
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Abstract

The traditional DC reactive voltage regulation is mainly based on the single DC reactive voltage control, and it lacks the consideration of the interaction effect on the multi-DC reactive voltage. This paper presents a method of multi-DC reactive voltage optimization based on reinforcement learning. In the interaction between the action strategy and the multi-dc state, the Q-value function corresponding to each state-action is obtained, and the optimal reactive voltage control strategy is formed under various operating states of multi-DC. At the same time, because the Q-value function based on this method contains the global response information of the power grid, it can realize the unified coordination of reactive voltage between DC and DC, converter station filter and DC near region conventional units, and give the global optimal control strategy within the power grid. The effect of multi-DC reactive voltage optimization control is improved. Based on the actual data of power grid, the simulation results show the effectiveness and rationality of this method.
基于强化学习的多直流电网无功电压优化研究
传统的直流无功电压调节主要是基于单直流无功电压的控制,缺乏对多直流无功电压交互作用的考虑。提出了一种基于强化学习的多直流无功电压优化方法。在动作策略与多直流状态的交互作用中,得到各状态-动作对应的q值函数,形成多直流不同运行状态下的最优无功电压控制策略。同时,由于基于该方法的q值函数包含电网的全局响应信息,可以实现直流与直流、换流站滤波器和直流近域常规机组之间无功电压的统一协调,并给出电网内全局最优控制策略。提高了多直流无功电压优化控制的效果。基于电网实际数据的仿真结果表明了该方法的有效性和合理性。
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