针对电网状态估计的虚假数据注入攻击

Yao Liu, P. Ning, M. Reiter
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引用次数: 1058

摘要

电网是一个复杂的系统,通过横跨大地理区域的输电和配电网络将发电机与消费者连接起来。系统监测是保证电网可靠运行的必要条件,在系统监测中使用状态估计,通过对电表测量和电力系统模型的分析,对电网状态进行最佳估计。已经开发了各种技术来检测和识别不良测量,包括由任意、非随机原因引入的交互不良测量。乍一看,这些技术似乎也可以挫败攻击者注入的恶意度量。在本文中,我们通过提出和分析针对电网状态估计的一类新的攻击(称为虚假数据注入攻击),暴露了现有不良测量检测算法的未知漏洞。假设攻击者可以访问当前的电力系统配置信息并操纵变电站等物理保护位置的仪表测量,这种攻击可以在现有算法无法检测到的情况下为某些状态变量引入任意误差。此外,我们还研究了两种场景,其中攻击者要么被限制在特定的仪表上,要么被限制在破坏仪表所需的资源上。研究表明,在这两种情况下,攻击者都可以系统有效地构造攻击向量,以任意方式改变状态估计的结果。我们还将这些攻击扩展到广义的虚假数据注入攻击,通过利用通常在状态估计中可以容忍的测量误差,可以进一步增加影响。我们通过使用IEEE测试系统的模拟演示了这些攻击的成功,并讨论了这些攻击的实用性和限制其有效性的现实世界约束。
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False data injection attacks against state estimation in electric power grids
A power grid is a complex system connecting electric power generators to consumers through power transmission and distribution networks across a large geographical area. System monitoring is necessary to ensure the reliable operation of power grids, and state estimation is used in system monitoring to best estimate the power grid state through analysis of meter measurements and power system models. Various techniques have been developed to detect and identify bad measurements, including interacting bad measurements introduced by arbitrary, nonrandom causes. At first glance, it seems that these techniques can also defeat malicious measurements injected by attackers. In this article, we expose an unknown vulnerability of existing bad measurement detection algorithms by presenting and analyzing a new class of attacks, called false data injection attacks, against state estimation in electric power grids. Under the assumption that the attacker can access the current power system configuration information and manipulate the measurements of meters at physically protected locations such as substations, such attacks can introduce arbitrary errors into certain state variables without being detected by existing algorithms. Moreover, we look at two scenarios, where the attacker is either constrained to specific meters or limited in the resources required to compromise meters. We show that the attacker can systematically and efficiently construct attack vectors in both scenarios to change the results of state estimation in arbitrary ways. We also extend these attacks to generalized false data injection attacks, which can further increase the impact by exploiting measurement errors typically tolerated in state estimation. We demonstrate the success of these attacks through simulation using IEEE test systems, and also discuss the practicality of these attacks and the real-world constraints that limit their effectiveness.
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来源期刊
ACM Transactions on Information and System Security
ACM Transactions on Information and System Security 工程技术-计算机:信息系统
CiteScore
4.50
自引率
0.00%
发文量
0
审稿时长
3.3 months
期刊介绍: ISSEC is a scholarly, scientific journal that publishes original research papers in all areas of information and system security, including technologies, systems, applications, and policies.
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