电力系统状态估计中FDI攻击成功的双重智能方法

Abdullah M. Sawas, H. Farag
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引用次数: 4

摘要

最近的研究表明,电力系统中的状态估计器容易受到虚假数据注入攻击(FDIA)。然而,对于攻击者来说,构造一个最省力的攻击向量是很困难的,并且是一个已知的0范数优化问题。本文提出了一种双重智能方法来优化构造FDIA向量。首先,将矢量分量的选择问题表述为约束非线性规划问题,并采用遗传算法求解。其次,训练神经网络实时生成矢量振幅。攻击向量根据要破坏的测量数、攻击者可访问的测量集以及成功通过状态估计器的坏数据检测算法的灵活性进行优化选择。分析了ieee14总线系统在各种系统负载条件下对交流状态估计器的攻击性能,并考虑了两种攻击策略。
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Two-fold Intelligent Approach for Successful FDI Attack on Power Systems State Estimation
Recent research works have revealed that state estimators in power systems are susceptible to false data injection attacks (FDIA). Still, for an adversary, constructing a least effort attack vector is difficult and known to be L0-norm optimization problem. In this paper, two-fold intelligent approach is proposed to optimally construct the FDIA vector. First, the problem of selecting the vector components is formulated as a constrained nonlinear programming problem and is solved using Genetic Algorithm. Second, a Neural Network is trained to generate in real-time the vector amplitudes. The attack vector is optimally selected in terms of number of measurements to compromise, the set of measurements accessible be the adversary, and flexibility to successfully pass Bad Data Detection algorithm of the state estimator. The performance of the attack vectors is analyzed on the IEEE 14-bus system against AC state estimator for a range of various system loading conditions and considering two attack strategies.
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