关键铁路基础设施网络安全的指标驱动评估

H. Neema, Bradley Potteiger, X. Koutsoukos, Cheeyee Tang, K. Stouffer
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引用次数: 5

摘要

在过去的几年里,铁路基础设施的连接越来越紧密,更像传统的网络物理系统[1]模型。由于网络和物理领域之间的紧密耦合性质,新的攻击媒介正在出现,为远程劫持系统组件创造了途径,这些组件的设计无法承受此类攻击。因此,需要实施最佳实践网络安全技术,以确保未来铁路设计的安全性和弹性,以及该领域已经存在的基础设施。然而,传统的大规模实验评估,即通过运行实验设计(DOE)来评估大量变量,可能并不总是实用的,也可能无法提供结论性的结果[2]。此外,为了实现可扩展的实验,必须根据评估的分析目标设计建模抽象、仿真配置和实验场景。因此,针对一组关键的操作指标进行评估,并使用这些指标配置和扩展传统的DOE方法是有用的。在这项工作中,我们提出了一种指标驱动的评估方法,用于使用分布式仿真框架评估铁路关键基础设施的安全性和弹性。给出了一个带有实验结果的案例研究,证明了我们的测试平台的功能。
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Metrics-Driven Evaluation of Cybersecurity for Critical Railway Infrastructure
In the past couple of years, railway infrastructure has been growing more connected, resembling more of a traditional Cyber-Physical System [1] model. Due to the tightly coupled nature between the cyber and physical domains, new attack vectors are emerging that create an avenue for remote hijacking of system components not designed to withstand such attacks. As such, best practice cybersecurity techniques need to be put in place to ensure the safety and resiliency of future railway designs, as well as infrastructure already in the field. However, traditional large-scale experimental evaluation that involves evaluating a large set of variables by running a design of experiments (DOE) may not always be practical and might not provide conclusive results [2]. In addition, to achieve scalable experimentation, the modeling abstractions, simulation configurations, and experiment scenarios must be designed according to the analysis goals of the evaluations. Thus, it is useful to target a set of key operational metrics for evaluation and configure and extend the traditional DOE methods using these metrics. In this work, we present a metricsdriven evaluation approach for evaluating the security and resilience of railway critical infrastructure using a distributed simulation framework. A case study with experiment results is provided that demonstrates the capabilities of our testbed.
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