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Vector correlation learning and pairwise optimization feature selection for false data injection attack detection in smart grid

机译:面向智能电网虚假数据注入攻击检测的向量相关学习和成对优化特征选择

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This paper mainly studies vector-related learning and pairwise optimization feature selection for false data injection attack detection in smart grid. In order to provide experimental detection of false data injection attacks, this article will conduct a detailed analysis of the power system segmentation. This paper comprehensively considers the similarity of nodes, security control and confidentiality strategies to complete the optimal partition. Next, we preprocess the measurement data. In order to improve the adaptability of the algorithm structure to the grid structure and further improve the accuracy and convergence speed of the algorithm output, a differential evolution algorithm with swarm intelligence is proposed. Obtain a higher-precision state estimate useful for detecting bad data. In the experiment of this article, if false data account for 20 of all data, the detection accuracy exceeds 75. As the number of experimental groups increases, the detection accuracy of only one type of false data that does not meet the rules will continue to increase, but the detection accuracy of other types of false data will not change much, but the overall detection accuracy will become higher. Experimental results show that the detection framework can not only effectively detect and identify false data injection attacks on multiple bus nodes, but also has high detection accuracy and can effectively recover false data.
机译:该文主要研究智能电网中虚假数据注入攻击检测的向量相关学习和成对优化特征选择。为了提供对虚假数据注入攻击的实验检测,本文将对电力系统分割进行详细分析。该文综合考虑节点的相似性、安全控制和保密策略,完成最优分区。接下来,我们对测量数据进行预处理。为了提高算法结构对网格结构的适应性,进一步提高算法输出的精度和收敛速度,该文提出一种具有群体智能的差分进化算法。获取更高精度的状态估计值,可用于检测不良数据。在本文的实验中,如果虚假数据占所有数据的20%,则检测准确率超过75%。随着实验组数的增加,只有一类不符合规则的假数据的检测准确率会不断提高,但其他类型假数据的检测准确率变化不大,但整体检测准确率会变得更高。实验结果表明,该检测框架不仅能有效检测和识别多个总线节点上的虚假数据注入攻击,而且检测准确率高,能够有效恢复虚假数据。

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