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Power IoT Attack Samples Generation and Detection Using Generative Adversarial Networks

机译:电源IOT攻击样本使用生成对抗网络生成和检测

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With the rapid development of the electric power Internet of Things, the problem of a large number of electric power Internet of Things(power IoT) terminals accessing to the power grid and the problem of “blurred borders” for the power grid is becoming serious. The security problem of the electric power Internet of Things has become a hot topic of current concern. The attack detection method based on deep learning is an effective attack detection method, but the lack of power IoT attack samples leads to the unsatisfactory effect of the deep learning model, so this paper proposes a sample generation method for power Internet of Things attacks based on adversarial generation networks(GAN), then mix the different amount of generated attack samples with the original samples, through the deep neural networks(DNN) for attack detection, and finally compare the effect of the model. This method proves that increasing the attack sample of power Internet of Things greatly improves the accuracy of model detection, and the detection accuracy can reach 98%.
机译:随着电力互联网的快速发展,大量电力互联网的问题(电源物联网)终端访问电网和“模糊边界”的电网的问题变得严重。电力互联网的安全问题已成为当前关注的热门话题。基于深度学习的攻击检测方法是一种有效的攻击检测方法,但缺乏电源IOT攻击样本导致深度学习模型的效果不令人满意,因此本文提出了一种基于的电源互联网的示例生成方法对手生成网络(GaN),然后将不同量的生成攻击样本与原始样本混合通过深神经网络(DNN)进行攻击检测,最后比较模型的效果。这种方法证明,增加电网的攻击样本大大提高了模型检测的准确性,检测精度可以达到98%。

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