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首页> 外文期刊>IEEE Transactions on Power Systems >Feature analysis of power flows based on the allocations of phase-shifting transformers
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Feature analysis of power flows based on the allocations of phase-shifting transformers

机译:基于移相变压器分配的潮流特征分析

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摘要

This paper proposes a novel approach to identify the deviations of power flows which are controlled by multiple phase-shifting transformers (PSTs). In order to control the power flows of each loop independently, at the first, the minimum need of PST sets is determined as the number of co-trees to the entire network. For the reason that the co-tree patterns are not unique, there are many PST allocations that exist and can be found as the co-tree patterns. In this paper, since the correlation between power-flow deviations to the control angles of PSTs allocating in one co-tree pattern can be characterized into one matrix, the features of the controllable area of power flows corresponding to all PSTs allocation candidates can be extracted by the eigenanalysis of those matrices. By which, the features of the controllable area of power flows corresponding to all of the PST's allocation candidates can be extracted by the eigenanalysis of the matrix. Finally, judging from the power-flow profiles, the optimal allocation to the specific control target can be found. From the viewpoint of the flexible power-flow control in an open-access network, the proposal should contribute to find out the optimal PST's allocation for power-flow control. The effectiveness of the proposed method is confirmed by the simulation studies of two model systems.
机译:本文提出了一种新颖的方法来识别由多个移相变压器(PST)控制的潮流偏差。为了独立地控制每个环路的功率流,首先,将PST集的最小需求确定为通向整个网络的同树的数量。由于辅助树模式不是唯一的原因,存在许多PST分配,并且可以将其作为辅助树模式找到。在本文中,由于可以将潮流偏差与以一种共树模式分配的PST的控制角度之间的相关性表征为一个矩阵,因此可以提取与所有PST分配候选相对应的潮流可控制区域的特征。通过这些矩阵的特征分析。通过该方法,可以通过矩阵的特征分析来提取与所有PST的分配候选相对应的可控潮流区域的特征。最后,从潮流曲线判断,可以找到针对特定控制目标的最佳分配。从开放接入网络中灵活的潮流控制观点来看,该提案应有助于找出用于潮流控制的最优PST分配。通过对两个模型系统的仿真研究证实了该方法的有效性。

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