Multi-Model Resilient Observer under False Data Injection Attacks

O. Anubi, Charalambos Konstantinou, Carlos A. Wong, Satish Vedula
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引用次数: 2

Abstract

In this paper, we present the concept of boosting the resiliency of optimization-based observers for cyber-physical systems (CPS) using auxiliary sources of information. Due to the tight coupling of physics, communication and computation, a malicious agent can exploit multiple inherent vulnerabilities in order to inject stealthy signals into the measurement process. The problem setting considers the scenario in which an attacker strategically corrupts portions of the data in order to force wrong state estimates which could have catastrophic consequences. The goal of the proposed observer is to compute the true states in-spite of the adversarial corruption. In the formulation, we use a measurement prior distribution generated by the auxiliary model to refine the feasible region of a traditional compressive sensing-based regression problem. A constrained optimization-based observer is developed using $l_{1}$-minimization scheme. Numerical experiments show that the solution of the resulting problem recovers the true states of the system. The developed algorithm is evaluated through a numerical simulation example of the IEEE 14-bus system.
虚假数据注入攻击下的多模型弹性观察者
在本文中,我们提出了使用辅助信息源提高基于优化的网络物理系统(CPS)观察者的弹性的概念。由于物理、通信和计算的紧密耦合,恶意代理可以利用多个固有漏洞在测量过程中注入隐形信号。问题设置考虑了这样一种场景:攻击者策略性地破坏部分数据,以强制进行错误的状态估计,这可能导致灾难性的后果。所提出的观察者的目标是在存在对抗性破坏的情况下计算真实状态。在该公式中,我们使用由辅助模型生成的测量先验分布来细化传统的基于压缩感知的回归问题的可行区域。使用$l_{1}$-最小化方案开发了基于约束优化的观测器。数值实验表明,所得问题的解恢复了系统的真实状态。通过一个IEEE 14总线系统的数值仿真实例,对所提出的算法进行了验证。
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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