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基于RTDS的柔性互联装置控制策略的仿真研究

Power Capacitor & Reactive Power Compensation(2019)

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Abstract
近年来微电网飞速发展,能源互联网快速发展,各电网之间的并联运行是大势所趋,因此并网技术备受关注.本文提出了一种用于微电网之间、微电网与大电网之间并网运行的柔性互联装置,文章首先介绍了柔性互联装置的拓扑结构、工作原理及功能优势;然后分析了现有控制策略,提出一种以PI控制为基础的电流矢量控制策略及运行模式,最终在RTDS系统上搭建柔性互联装置的仿真模型,试验证明:装置可以实现多个非同步电网的快速并网且冲击小,并联运行时,潮流方向和大小灵活控制,具备无功补偿功能和良好的隔离性,提高电网电能质量.
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