Critical Node Identification for the Power Optical Cable Network Based on Improved Local Neighborhood Search

Yuting Chen, Hu Lin, Iie Xu, Lei Tao, Xuanan Song, Tong Sun
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Abstract

With the rapid development of power grid system, the needs of information transmission soar. This also leads to the topological complexity increasing of power communication network. The power cable network today becomes a complex network. In such context, damage of a quite few critical components can induce high loss to the entire network. Thus, identification of these critical nodes for power communication network is highly important. In this paper, a method based on an improved local neighborhood search (ILNS) is proposed to identify the critical nodes in a power optical cable network. Firstly, a model based on graph theory is designed to describe the topology of a power optical cable network. To assess the damage caused by node disruptions, Size of the largest connected component is introduced. Then, the ILNS-based method is proposed to identify critical nodes, i.e., communication station nodes whose disruption will decrease the performance most greatly. Finally, a case study based on a real power optical cable network is presented to validate the proposed method.
基于改进局部邻域搜索的电力光缆网络关键节点识别
随着电网系统的快速发展,信息传输需求剧增。这也导致了电力通信网络拓扑复杂性的增加。当今的电力电缆网络已成为一个复杂的网络。在这种情况下,相当多的关键部件的损坏会导致整个网络的巨大损失。因此,这些关键节点的识别对电力通信网络至关重要。提出了一种基于改进局部邻域搜索(ILNS)的电力光缆网络关键节点识别方法。首先,设计了基于图论的电力光缆网络拓扑模型。为了评估节点中断造成的损害,引入了最大连接组件的尺寸。然后,提出了基于ilns的关键节点识别方法,即通信站点节点中中断对性能影响最大的节点。最后,以实际电力光缆网络为例,验证了该方法的有效性。
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