Reactive power optimization control strategy for large-scale new energy access grid based on optimized particle swarm algorithm

Xingning Han, H. Cai, Sixuan Xu, Zhuyi Peng, Feifei Zhao, Wanchun Qi
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Abstract

Large scale new energy sources has high relativity to the distribution network, which will affect grid reactive power operation. Reactive power optimization can effectively improve power quality and system operation's safety, reliability and economy. Firstly, according to the characteristics of the new energy cluster where the isolated grid is connected to the flexible DC grid, a multi-objective imaginary power optimization model is builded that comprehensively includes system power cost and the new energy's reactive power margin cluster. Among them, to maximize the reactive power margin of the new energy cluster can effectively perfect the velocity of network restraint, and realize the pre-regulate of the fixity of transient voltage for the distributed energy cluster. Then, changing multi-objective into a single- objective optimization model by weighting method, and the particle swarm algorithm is used to solve it. Finally, through simulation verification, it is distinct that the proposed imaginary power optimization way can not only effectively reduce the system network loss, but also significantly enhance the imaginary power range of the distributed energy cluster, that can improve the system voltage.
基于优化粒子群算法的大型新能源接入电网无功优化控制策略
大规模新能源与配电网的相关性高,将影响电网无功运行。无功优化可以有效地提高电能质量和系统运行的安全性、可靠性和经济性。首先,根据隔离电网与柔性直流电网并网的新能源集群的特点,建立了综合考虑系统电力成本和新能源无功裕度集群的多目标虚功率优化模型;其中,最大化新能源集群的无功裕度可以有效地完善网络约束速度,实现分布式能源集群暂态电压不变性的预调节。然后,利用加权法将多目标优化模型转化为单目标优化模型,并利用粒子群算法进行求解。最后,通过仿真验证,表明所提出的虚功率优化方式不仅可以有效降低系统网络损耗,而且可以显著提高分布式能源集群的虚功率范围,从而提高系统电压。
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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