Cyber Resilience using State Estimation Updates Based on Cyber Attack Matrix Classification

Stephen Hopkins, E. Kalaimannan, C. John
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引用次数: 2

Abstract

Cyber-physical systems (CPS) maintain operation, reliability, and safety performance using state estimation and control methods. Internet connectivity and Internet of Things (IoT) devices are integrated with CPS, such as in smart grids. This integration of Operational Technology (OT) and Information Technology (IT) brings with it challenges for state estimation and exposure to cyber-threats. This research establishes a state estimation baseline, details the integration of IT, evaluates the vulnerabilities, and develops an approach for detecting and responding to cyber-attack data injections. Where other approaches focus on integration of IT cyber-controls, this research focuses on development of classification tools using data currently available in state estimation methods to quantitatively determine the presence of cyber-attack data. The tools may increase computational requirements but provide methods which can be integrated with existing state estimation methods and provide for future research in state estimation based cyber-attack incident response. A robust cyber-resilient CPS includes the ability to detect and classify a cyber-attack, determine the true system state, and respond to the cyber-attack. The purpose of this paper is to establish a means for a cyber aware state estimator given the existence of sub-erroneous outlier detection, cyber-attack data weighting, cyber-attack data classification, and state estimation cyber detection.
基于网络攻击矩阵分类的状态估计更新网络弹性
网络物理系统(CPS)使用状态估计和控制方法来维护运行、可靠性和安全性能。互联网连接和物联网(IoT)设备与CPS集成,例如智能电网。操作技术(OT)和信息技术(IT)的这种集成为状态评估和暴露于网络威胁带来了挑战。本研究建立了状态估计基线,详细介绍了IT集成,评估了漏洞,并开发了一种检测和响应网络攻击数据注入的方法。其他方法侧重于集成IT网络控制,而本研究侧重于使用状态估计方法中当前可用的数据开发分类工具,以定量确定网络攻击数据的存在。这些工具可能会增加计算需求,但提供了可以与现有状态估计方法集成的方法,并为未来基于状态估计的网络攻击事件响应研究提供了基础。强大的网络弹性CPS包括检测和分类网络攻击、确定真实系统状态以及响应网络攻击的能力。本文的目的是在存在亚错误异常点检测、网络攻击数据加权、网络攻击数据分类和状态估计网络检测的情况下,建立一种网络感知状态估计器的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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