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A Gaussian-Mixture Model Based Detection Scheme against Data Integrity Attacks in the Smart Grid

机译:基于高斯 - 混合模型的智能电网数据完整性攻击的基于数据的检测方案

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In the smart grid, the Advanced Metering Infrastructure (AMI) will be deployed to monitor and control the power grid by integrating both computing and networking components to achieve stable and efficient operation. The AMI is vulnerable to cyber attacks, especially in the form of data integrity attacks. A number of research efforts have been devoted to detecting such attacks. Nonetheless, the majority of existing schemes either rely on a pre-defined threshold, or require external knowledge. This leaves open the possibility for low detection accuracy when the threshold is improperly defined, and where there is a lack of the requisite external knowledge. To address this issue, in this paper we propose a Gaussian-Mixture Model-based Detection (GMMD) scheme to combat data integrity attacks. Not relying upon the pre-defined threshold or external knowledge, our scheme operates by narrowing the range of normal data that can be obtained by clustering the historical data and learning the minimum and maximum values of individual clusters. To validate the effectiveness of our scheme, we conduct performance evaluation based on the Electricity Load Diagrams 20112014 data set, and analyze the effectiveness of the proposed scheme with respect to detection accuracy. The results of our investigation demonstrate that our scheme can achieve a higher detection rate, and lower error rate, in comparison with existing schemes based on the Min-Max model.
机译:在智能电网中,将部署高级计量基础架构(AMI),以通过集成计算和网络组件来实现稳定和有效的操作来监视和控制电网。 AMI容易受到网络攻击的影响,特别是以数据完整性攻击的形式。许多研究努力致力于检测这种攻击。尽管如此,大多数现有方案依赖于预定义的阈值,或需要外部知识。当阈值定义时,这叶子打开了低检测精度的可能性,并且缺乏必要的外部知识。为了解决这个问题,本文提出了一种基于高斯 - 混合模型的检测(GMMD)方案来打击数据完整性攻击。不依赖于预定义的阈值或外部知识,我们的方案通过缩小通过聚类历史数据来获得的正常数据范围来操作,并学习各个集群的最小值和最大值。为了验证我们的计划的有效性,我们基于电力负载图20112014数据集进行性能评估,并分析了所提出的方案关于检测精度的有效性。我们的调查结果表明,与基于MIN-MAX模型的现有方案相比,我们的方案可以实现更高的检测率和更低的错误率。

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