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Bad data detection in the context of leverage point attacks in modern power networks

机译:在现代电力网络中利用杠杆点攻击进行不良数据检测

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This paper demonstrates a concept to detect bad data in state estimation when the leverage measurements are tampered with gross error. The concept is based on separating leverage measurements from non-leverage measurements by a technique called diagnostic robust generalized potential (DRGP), which also takes care of the masking or swamping effect, if any. The methodology then detects the erroneous measurements from the generalized studentized residuals (GSR). The effectiveness of the method is validated with a small illustrative example, standard IEEE 14-bus and 123-bus unbalanced network models and compared with the existing methods. The method is demonstrated to be potentially very useful to detect attacks in smart power grid targeting leverage points in the system.
机译:本文演示了一种概念,用于在杠杆测量被严重错误篡改时在状态估计中检测不良数据。该概念基于通过称为诊断鲁棒广义势能(DRGP)的技术将杠杆率测量值与非杠杆率测量值分离的方法,该技术还应考虑掩盖或淹没效果(如果有)。然后,该方法从广义学生化残差(GSR)中检测出错误的测量结果。通过一个小的说明性示例,标准的IEEE 14总线和123总线不平衡网络模型验证了该方法的有效性,并与现有方法进行了比较。事实证明,该方法对于检测智能电网中针对系统中杠杆点的攻击非常有用。

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