网络物理系统大规模数据保护的隐私保护技术

Marwa Keshk, Nour Moustafa, E. Sitnikova, B. Turnbull, Dinusha Vatsalan
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引用次数: 1

摘要

由于网络物理系统(cps),如电力和天然气网络,从设备和网络产生异构和大规模的数据源,他们需要有效的隐私保护技术来保护数据和系统免受网络攻击。为了保护cps免受潜在的网络威胁,识别cps组件的漏洞以防止高级持续威胁(apt)并使用隐私保护技术保护其生成的数据至关重要。本文旨在回顾保护cps及其网络免受网络攻击的隐私保护技术的现状。讨论了隐私保护和cps的概念,说明了cps的组件以及如何使用网络和物理黑客场景攻击它们。然后,讨论了隐私保护的类型,包括扰动、身份验证、机器学习(ML)、密码学和区块链,以演示如何应用它们来保护cps及其网络中的原始数据。最后,阐述了cps隐私保护存在的挑战、解决方案和未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-Preserving Techniques for Protecting Large-Scale Data of Cyber-Physical Systems
As Cyber-Physical Systems (CPSs), such as power and gas networks, generate heterogeneous and large-scale data sources from devices and networks, they need efficient privacy-preserving techniques to protect data and systems from cyber attacks. To safeguard CPSs from potential cyber threats, it is vital to identify vulnerabilities of CPSs’ components to prevent Advanced Persistent Threats (APTs) and protect their generated data using privacy-preserving techniques. This paper aims to review the current state of privacy-preserving techniques for protecting CPSs and their networks against cyber attacks. Concepts of Privacy preservation and CPSs are discussed, illustrating CPSs’ components and how they could be hacked using cyber and physical hacking scenarios. Then, types of privacy preservation, including perturbation, authentication, machine learning (ML), cryptography and blockchain, are discussed to demonstrate how they would be applied to protect the original data in CPSs and their networks. Finally, we explain existing challenges, solutions and future research directions of privacy preservation in CPSs.
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