利用贝叶斯网络进行系统中的网络攻击传播分析

Jamal El Hachem, Ali Sedaghatbaf, Elena Lisova, Aida Čaušević
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引用次数: 3

摘要

系统的系统(so)表示一组独立的组成系统(CS),它们相互协作以提供它们无法独立实现的功能。我们将SoS视为一组需要得到充分保护的连接服务。这些独立的、演化的和分布式的系统的集成,加剧了SoS的复杂性,强调了行为的不确定性,这使得SoS的安全分析成为一个严峻的挑战。设计SoS时的主要优先事项之一是分析CS服务之间的未知依赖关系和导致潜在网络攻击的漏洞。这项工作的目的是研究如何利用软件工程方法来分析SoS内的网络攻击传播问题。这种分析对于在SoS设计阶段早期进行有效的SoS风险评估至关重要,并且需要保护SoS免受可能影响其安全性和安全性的高影响攻击。为了实现我们的目标,我们提出了一种模型驱动的分析方法,基于贝叶斯网络,灵敏度分析和通用漏洞评分系统(CVSS),旨在发现潜在的网络攻击传播并估计安全故障的概率及其对SoS服务的影响。我们用一个自主采石场的例子来说明这种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Bayesian Networks for a Cyberattacks Propagation Analysis in Systems-of-Systems
System of Systems (SoS) represent a set of independent Constituent Systems (CS) that collaborate in order to provide functionalities that they are unable to achieve independently. We consider SoS as a set of connected services that needs to be adequately protected. The integration of these independent, evolutionary and distributed systems, intensifies SoS complexity and emphasizes the behavior uncertainty, which makes an SoS security analysis a critical challenge. One of the major priorities when designing SoS, is to analyze the unknown dependencies among CS services and vulnerabilities leading to potential cyberattacks. The aim of this work is to investigate how Software Engineering approaches could be leveraged to analyze the cyberattack propagation problem within an SoS. Such analysis is essential for an efficient SoS risk assessment performed early at the SoS design phase and required to protect the SoS from possibly high impact attacks affecting its safety and security. In order to achieve our objective, we present a model-driven analysis approach, based on Bayesian Networks, a sensitivity analysis and Common Vulnerability Scoring System (CVSS) with aim to discover potential cyberattacks propagation and estimate the probability of a security failure and its impact on SoS services. We illustrate this approach in an autonomous quarry example.
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