防止智能基础设施中的虚假数据注入

V. Krundyshev, M. Kalinin
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引用次数: 14

摘要

在网络物理系统与电信网络深度融合的基础上,发展智能基础设施,形成以用户为导向的网络空间。它获得了实时分析整个系统状态以产生信息和控制过程的能力。由于分割了控制论和ITC空间,智能基础设施比静态计算机间网络更容易受到安全和安全威胁。本文讨论了一种检测特定安全威胁的方法,即针对工业物联网(IIoT)、智能建筑、电子医院、智能电网等类型的智能基础设施的虚假数据注入(FDI)。这是对应用我们集成了一组机器学习技术的新方法识别FDI攻击的建议方法的描述。新方法在FDI预防方面的准确率为97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prevention of false data injections in smart infrastructures
Smart infrastructure is being developed on the basis of deep integration of cyberphysical systems and telecommunication networks to form a customer-oriented cyberspace. It acquires the ability to analyze the state of the entire system in real time to produce information and control processes in it. For splitting the cybernetic and ITC spaces, smart infrastructure is more vulnerable to security and safety threats than a static inter-computer network. This paper discusses an approach for detecting a specific safety threat, the false data injection (FDI), targeted at the smart infrastructures of such types as industrial Internet of Things (IIoT), smart buildings, e-hospitals, smart grids. This is a description of the proposed approach to identify the FDI attacks applying our new method that integrates a set of machine learning techniques. New approach has demonstrated 97% of accuracy at FDI prevention.
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