Identifying, analyzing, and evaluating cybersecurity risks are essential to assess the vulnerabilities of modern manufacturing infrastructures and to devise effective decision-making strategies to secure critical manufacturing against potential cyberattacks. In response, this work proposes a graph-theoretic approach for risk modeling and assessment to address the lack of quantitative cybersecurity risk assessment frameworks for smart manufacturing systems. In doing so, first, threat attributes are represented using an attack graphical model derived from manufacturing cyberattack taxonomies. Attack taxonomies offer consistent structures to categorize threat attributes, and the graphical approach helps model their interdependence. Second, the graphs are analyzed to explore how threat events can propagate through the manufacturing value chain and identify the manufacturing assets that threat actors can access and compromise during a threat event. Third, the proposed method identifies the attack path that maximizes the likelihood of success and minimizes the attack detection probability, and then computes the associated cybersecurity risk. Finally, the proposed risk modeling and assessment framework is demonstrated via an interconnected smart manufacturing system illustrative example. Using the proposed approach, practitioners can identify critical connections and manufacturing assets requiring prioritized security controls and develop and deploy appropriate defense measures accordingly.
翻译:确定、分析和评估网络安全风险对于评估现代制造基础设施的脆弱性和制定有效的决策战略以确保关键制造业免遭潜在网络攻击至关重要。对此,这项工作提出了一种图表理论方法,用于风险建模和评估,以解决智能制造系统缺乏定量网络安全风险评估框架的问题。首先,威胁属性代表了从制造网络攻击分类法中得出的攻击图形模型。攻击分类法提供了对威胁特性进行分类的一致结构,图形方法有助于模拟其相互依存性。第二,对图表进行了分析,以探讨威胁事件如何通过制造价值链传播,并确定威胁行为者在威胁事件期间能够获取和妥协的制造资产。第三,拟议方法确定了袭击路径,以最大限度地提高成功的可能性,最大限度地减少袭击探测概率,然后对相关的网络安全风险进行计算。最后,通过一个相互关联的智能制造系统示例展示了拟议的风险建模和评估框架。使用拟议方法,从业人员可以确定关键关联和制造资产,需要优先的安保控制,并据此制定和部署适当的防御措施。