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A cascading failure model based on AC optimal power flow: Case study

机译:基于AC最优功率流的级联故障模型:案例研究

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Simulating the grids cascading failure process is an essential means of preventing cascading failures. In traditional cascading failure models, DC power flow models are applied widely, but reactive power characteristic cannot be reflected. This study improves and applies an AC-based Cascading Failure model (called ACCF model), which captures bus load shedding and branch failures, all via AC power flow and optimal power flow analyses. Taking the IEEE 30- and 118-bus power systems as case studies, the ACCF model is proved feasible. With case studies, this study reveals that during the cascading failure, the broken branches are not necessarily close to the initial faulty elements, and some of the affected nodes/branches are "far" away from the initial faulty nodes. And as the initial branch failure probability increases, the system real power loss probability function gradually changes from approximate power distribution to a normal distribution. Meanwhile, the study also discovers that as the initial branch failure probability further increases, the system real power loss changes from a normal distribution to a distribution that appearing to be symmetric with the loss function under a low initial branch failure probability. The findings could facilitate grids safety and stable operation, as well as grids disaster prevention and relief. (C) 2018 Elsevier B.V. All rights reserved.
机译:模拟网格级联故障过程是防止级联故障的必要手段。在传统的级联故障模型中,直流电流模型广泛应用,但不能反映无功功率特性。本研究可提高和应用基于AC的级联故障模型(称为ACCF模型),其捕获总线负载脱落和分支故障,所有通过交流电流和最佳功率流分析。以IEEE 30和118母线电力系统为例,证明ACCF模型可行。在案例研究中,本研究表明,在级联故障期间,破碎的分支不一定接近初始故障元素,并且一些受影响的节点/分支是“远离初始故障节点的”远离“。随着初始分支故障概率增加,系统实际功率损耗概率函数逐渐从近似功率分布变为正态分布。同时,该研究还发现,随着初始分支机故障概率进一步增加,系统实际功率损耗从正常分布到出现在低初始分支故障概率下的损耗功能对称的分布。调查结果可以促进网格安全性和稳定的运行,以及救灾救灾和救济。 (c)2018年elestvier b.v.保留所有权利。

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