Optimal malicious attack construction and robust detection in Smart Grid cyber security analysis

Jinping Hao, R. Piechocki, D. Kaleshi, W. Chin, Z. Fan
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引用次数: 14

Abstract

Malicious data injection attacks against smart grid systems are one of the most significant problems in cyber security. Previously, these are either targeted attacks or attacks with restrictions. In this paper, optimal random undetectable attacks are considered for the first time. In the state of the art, stealth attacks can always exist if the number of compromised measurements exceeds a certain value. In this paper, it is shown that undetectable attacks can be accomplished by altering only a much smaller number of measurements. On the other hand, a robust detection algorithm is designed by taking advantage of the sparse and low rank properties of the block measurements for a time interval. The element-wise constraints are introduced to improve the error tolerance and the problem of detecting false data with partial observations is also considered in this paper. The performance of the proposed algorithms is investigated based on IEEE test systems.
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智能电网网络安全分析中的最优恶意攻击构造与鲁棒检测
针对智能电网系统的恶意数据注入攻击是网络安全中最重要的问题之一。以前,这些攻击要么是有针对性的攻击,要么是有限制的攻击。本文首次考虑了最优随机不可检测攻击。在目前的技术水平下,如果泄露的测量值超过一定的值,隐形攻击总是存在的。在本文中,它表明,不可检测的攻击可以通过改变只有很少数量的测量完成。另一方面,利用块测量在一定时间间隔内的稀疏性和低秩性,设计了一种鲁棒检测算法。本文引入了元素约束来提高误差容忍度,并考虑了部分观测数据的假数据检测问题。基于IEEE测试系统对所提算法的性能进行了研究。
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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