Defense-in-depth against insider attacks in cyber-physical systems

Xirong Ning, Jin Jiang
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引用次数: 4

Abstract

In a cyber-physical system (CPS) built on Internet-of-things (IoT) technologies, whenever measurement and control signals are transferred over communication networks across cyber and physical systems, it potentially becomes a target for adversaries. The problem becomes especially serious if the adversaries are insiders. A single layer of defense may not be strong enough in such a case, as it is difficult to assess the extent of knowledge that the inside attackers may have known about the physical and cyber system configurations, communication networks/protocols, and their respective vulnerabilities. Hence, it is paramount to have a reliable and fail-safe defense-in-depth architecture to fence off would-be-attackers. In this paper, a multi-layer defense-in-depth approach has been developed. For an inside attacker with legitimate access, the first line of defense, such as access control, may have already been compromised. Given this fact, the focus of the current paper has been on detection and mitigation. Both data-driven and model-based techniques are considered to catch stealthy attacks and stop them in their tracks. Effective mitigation techniques can then be deployed to minimize the adverse effects. To demonstrate this design philosophy and validate the effectiveness of the developed methodologies, a lab-scale cyber-physical system platform based on industry-grade communication networks and physical sensors has been used for validation.

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深度防御网络物理系统内部攻击
在基于物联网(IoT)技术的网络物理系统(CPS)中,每当测量和控制信号通过通信网络跨网络和物理系统传输时,它就有可能成为对手的目标。如果对手是内部人士,问题就会变得特别严重。在这种情况下,单层防御可能不够强大,因为很难评估内部攻击者对物理和网络系统配置、通信网络/协议及其各自漏洞的了解程度。因此,最重要的是要有一个可靠的和故障安全的纵深防御体系结构来隔离可能的攻击者。本文提出了一种多层纵深防御方法。对于具有合法访问权限的内部攻击者来说,第一道防线(例如访问控制)可能已经被攻破。鉴于这一事实,本文的重点是检测和缓解。数据驱动和基于模型的技术都被认为可以捕捉到隐形攻击并阻止它们。然后可以采用有效的缓解技术,尽量减少不利影响。为了证明这一设计理念并验证所开发方法的有效性,一个基于工业级通信网络和物理传感器的实验室规模的网络物理系统平台已被用于验证。
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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CiteScore
13.80
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