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PMU-Assisted Bad Data Detection in Power Systems

机译:电力系统中PMU辅助的不良数据检测

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In this paper, we study bad data detection in a power system by strategically placing phasor measurement units (PMUs) at various buses across the power grid. We propose to optimize PMU placements by maximizing the probability of detecting bad data maliciously injected in the power grid. An optimum bad data detector is first developed by following the NeymanPearson criterion. The corresponding detection probability is shown to be an increasing function of the Kullback-Leibler (KL) divergence between the data distributions with and without bad data, respectively. Thus maximizing the detection probability is equivalent to maximizing the KL divergence. Since the bad data used in an attack is unknown, the PMU placement algorithm is developed by following a max-min criterion, that is, maximizing the minimum KL divergence under the assumption of the least detectable attack vector. Simulation results show that using the KL divergence as a design metric results in significant performance gains over existing methods that are developed based on critical measurements.
机译:在本文中,我们通过策略性地将相量测量单元(PMU)放置在整个电网的各种总线上,研究了电力系统中的不良数据检测。我们建议通过最大化检测恶意注入到电网中的不良数据的可能性来优化PMU位置。首先通过遵循NeymanPearson准则来开发最佳的不良数据检测器。相应的检测概率显示为分别具有和不具有不良数据的数据分布之间的Kullback-Leibler(KL)散度的增加函数。因此,最大化检测概率等同于最大化KL散度。由于攻击中使用的不良数据是未知的,因此PMU放置算法是通过遵循最大-最小准则开发的,即在可检测的攻击向量最少的情况下最大化最小KL散度。仿真结果表明,与基于关键度量开发的现有方法相比,使用KL散度作为设计指标可显着提高性能。

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