Identification of Key Nodes in Equipment System Network based on Function Chain

Cheng Huang, Yong Gang Li, Ying Wang
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Abstract

With the rapid development of modern military technology, the combat mode has been upgraded from traditional platform combat to system-level confrontation. In traditional combat network, node function is single and which is no proper assignment of tasks. The equipment system network studied in this paper contains many different functional nodes, which constitute a huge heterogeneous complex network. Most of the key node identification methods are analyzed from the network topology structure, such as degree, betweenness, K-shell, PageRank, etc. However, with the change of network topology, the identification effect of these methods will be biased. In this paper, we construct a nodal attack sequence, Consider the change of the number of effective OODA chains in the equipment system network after the nodes in the sequence are attacked. And combined with the improved Gray Wolf optimization algorithm, this paper proposes a key node evaluation model of equipment system network based on function chain - IABFI. Experimental results show that the proposed method is more effective, accurate, and applicable to different network topologies than other key node identification methods.
基于功能链的设备系统网络关键节点识别
随着现代军事技术的飞速发展,作战方式已由传统的平台作战升级为系统级对抗。在传统的作战网络中,节点功能单一,任务分配不合理。本文研究的设备系统网络包含许多不同功能的节点,构成了一个庞大的异构复杂网络。大多数关键节点识别方法都是从网络拓扑结构,如度、间度、K-shell、PageRank等进行分析的。然而,随着网络拓扑结构的变化,这些方法的识别效果会有所偏差。本文构造了一个节点攻击序列,考虑序列中的节点被攻击后设备系统网络中有效OODA链数的变化。并结合改进的灰狼优化算法,提出了一种基于功能链的装备系统网络关键节点评估模型——IABFI。实验结果表明,该方法比其他关键节点识别方法更有效、准确,适用于不同的网络拓扑结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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