Recognizing the type of connected devices to a network helps to perform security policies. In smart grids, identifying massive number of grid metering terminals based on network traffic analysis is almost blank and existing research has not proposed a targeted end-to-end model to solve the flow classification problem. Therefore, we proposed a hierarchical terminal recognition approach that applies the details of grid data. We have formed a two-level model structure by segmenting the grid data, which uses the statistical characteristics of network traffic and the specific behavior characteristics of grid metering terminals. Moreover, through the selection and reconstruction of features, we combine three algorithms to achieve accurate identification of terminal types that transmit network traffic. We conduct extensive experiments on a real dataset containing three types of grid metering terminals, and the results show that our research has improved performance compared to common recognition models. The combination of an autoencoder, K-Means and GradientBoost algorithm achieved the best recognition rate with F1 value of 98.3%.
翻译:认识到连接到网络的装置类型有助于实施安全政策。在智能网格中,根据网络流量分析确定大量网格计量终端几乎是空白的,现有研究没有提出解决流量分类问题的定向端对端模型。因此,我们提议采用一个应用网格数据细节的等级终端识别方法。我们通过对网格数据进行分解,形成了一个两级模型结构,该模型使用网络流量的统计特征和网格计量终端的具体行为特征。此外,通过选择和重建功能,我们合并了三种算法,以准确识别传输网络流量的终端类型。我们就包含三种网格计量终端的真实数据集进行了广泛的实验,结果显示,我们的研究与通用识别模型相比提高了性能。自动编码器、K-Means和GradientBoost算法的组合实现了98.3%的F1最高识别率。