基于神经网络的关键基础设施n阶依赖效应临界性概念建模

U. Mbanaso, J. Makinde
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引用次数: 0

摘要

本文利用神经网络对关键基础设施(CI) n阶依赖效应的临界性进行了概念建模。顺便提一下,关键基础设施通常不是独立的,它们大多以某种方式相互连接,从而创建一个相互依赖的复杂基础设施网络。这些基础设施之间的关系可以是单向的,也可以是双向的,并可能产生级联或升级效应。此外,依赖关系可以按第n个顺序排列,这意味着一个基础设施中的故障或中断可以级联到第n个相互连接的基础设施。n阶依赖性和临界性问题描述了顺序特征,这可能导致时间网络效应。因此,量化基础设施的重要性要求有效测量其故障或中断对其他互联基础设施的影响。为了理解基础设施之间n阶关系的复杂关系行为,我们使用神经网络(NN)对n阶依赖行为进行建模,以分析依赖基础设施的依赖程度和临界性。结果是量化特定基础设施的临界指数因子(CIF),作为其风险因素的度量,可以促进在发生故障或中断时的集体响应。使用我们新颖的神经网络方法,对基础设施或组织的CIFs进行比较,可以在全国范围内以更加协调和统一的方式为关键信息基础设施保护和恢复力(CIIPR)提供有效的机制。我们的模型展示了测量和建立ci的依赖程度(或相互依赖)和临界性的能力,作为主动CIIPR的标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conceptual Modelling of Criticality of Critical Infrastructure Nth Order Dependency Effect Using Neural Networks
This paper presents conceptual modelling of the criticality of critical infrastructure (CI) nth order dependency effect using neural networks. Incidentally, critical infrastructures are usually not stand-alone, they are mostly interconnected in some way thereby creating a complex network of infrastructures that depend on each other. The relationships between these infrastructures can be either unidirectional or bidirectional with possible cascading or escalating effect. Moreover, the dependency relationships can take an nth order, meaning that a failure or disruption in one infrastructure can cascade to nth interconnected infrastructure. The nth-order dependency and criticality problems depict a sequential characteristic, which can result in chronological cyber effects. Consequently, quantifying the criticality of infrastructure demands that the impact of its failure or disruption on other interconnected infrastructures be measured effectively. To understand the complex relational behaviour of nth order relationships between infrastructures, we model the behaviour of nth order dependency using Neural Network (NN) to analyse the degree of dependency and criticality of the dependent infrastructure. The outcome, which is to quantify the Criticality Index Factor (CIF) of a particular infrastructure as a measure of its risk factor can facilitate a collective response in the event of failure or disruption. Using our novel NN approach, a comparative view of CIFs of infrastructures or organisations can provide an efficient mechanism for Critical Information Infrastructure Protection and resilience (CIIPR) in a more coordinated and harmonised way nationally. Our model demonstrates the capability to measure and establish the degree of dependency (or interdependency) and criticality of CIs as a criterion for a proactive CIIPR.
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