电网级联故障和频率振荡的影响模型

Hannan Ma, Husheng Li, J. Song
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引用次数: 6

摘要

电网是由相互连接、相互作用的部件组成的复杂网络。本文主要研究了负荷级联故障的随机动力学和频率振荡在电网中的传播。利用影响模型的稳态概率,有效地识别出易受攻击的节点。影响模型是一种相互连接的马尔可夫链,可以有效地对网络组件的交互动态过程进行建模。我们提出了使用实时频率测量构建同质和异质影响模型的程序。提出了一种求解影响模型稳态概率的低复杂度算法。对于n节点网络,计算复杂度从0 (N6) FLOPS下降到0 (N4)。计算内存空间减少了68%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Influence models of cascading failure and frequency oscillation in the power grid
Power grid is a complex network of connected components interacting with each other. In this paper we focus on the random dynamics of both load cascading failure and the propagation of frequency oscillation in power grids. We effectively identify the vulnerable nodes by the steady state probabilities of influence model. Influence model is a type of inter-connected Markov chains that could efficiently model the interactive dynamic processes of networked components. We present the procedure to construct both homogenous and heterogeneous influence models using realtime frequency measurements. A low-complexity algorithm is proposed to compute the steady state probability of the Influence model. The computational complexity is dropped from O(N6) FLOPS to O(N4) for N-node networks. The computational memory space is reduced by 68%.
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