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Detecting False Data Injection Attacks on Power Grid by Sparse Optimization

机译:通过稀疏优化检测电网上的虚假数据注入攻击

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摘要

State estimation in electric power grid is vulnerable to false data injection attacks, and diagnosing such kind of malicious attacks has significant impacts on ensuring reliable operations for power systems. In this paper, the false data detection problem is viewed as a matrix separation problem. By noticing the intrinsic low dimensionality of temporal measurements of power grid states as well as the sparse nature of false data injection attacks, a novel false data detection mechanism is proposed based on the separation of nominal power grid states and anomalies. Two methods, the nuclear norm minimization and low rank matrix factorization, are presented to solve this problem. It is shown that proposed methods are able to identify proper power system operation states as well as detect the malicious attacks, even under the situation that collected measurement data is incomplete. Numerical simulation results both on the synthetic and real data validate the effectiveness of the proposed mechanism.
机译:电网中的状态估计容易受到错误的数据注入攻击,而诊断此类恶意攻击会对确保电力系统的可靠运行产生重大影响。在本文中,错误数据检测问题被视为矩阵分离问题。通过注意到电网状态时间测量的固有低维性以及虚假数据注入攻击的稀疏性质,基于标称电网状态和异常的分离,提出了一种新颖的虚假数据检测机制。提出了两种方法,核规范最小化和低秩矩阵分解,以解决该问题。结果表明,即使在收集的测量数据不完整的情况下,所提出的方法也能够识别正确的电力系统运行状态并检测恶意攻击。综合和真实数据的数值仿真结果验证了所提机制的有效性。

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