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Power Systems Intrusion Detection Using Novel Wrapped Feature Selection Framework

机译:电源系统入侵检测使用新颖的包装特征选择框架

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The power system measurement data has high-dimensional features and strong noise, which is difficult to be directly used for intrusion detection. Traditional feature extraction and selection methods take the feature processing as a preprocessing step and perform separately from the model training, which makes the features not well adapted to the model. Therefore, we propose a novel wrapped feature selection framework based on the Las Vegas algorithm, which can improve the detection accuracy by strengthening the coupling between the feature selection and the model training. The Las Vegas algorithm can evaluate a feature subset through a specified model. In this paper, a heuristic thinking is integrated into the Las Vegas algorithm, which greatly improves the search performance of the original method. Finally, the proposed framework is examined on the IEEE 14-bus, 39-bus and 57-bus test systems for two attacks and the experimental results proves the effectiveness and stability of the proposed framework.
机译:电力系统测量数据具有高维特征和强大的噪声,这难以直接用于入侵检测。传统的特征提取和选择方法将特征处理作为预处理步骤,并与模型训练分开执行,这使得功能不适用于模型。因此,我们提出了一种基于LAS VEGAS算法的新型包装特征选择框架,其可以通过强化特征选择与模型训练之间的耦合来提高检测精度。 LAS VEGAS算法可以通过指定模型评估特征子集。在本文中,启发式思维集成到LAS Vegas算法中,这大大提高了原始方法的搜索性能。最后,在IEEE 14公交车,39公共汽车和57辆总线测试系统上检查了所提出的框架,实验结果证明了所提出的框架的有效性和稳定性。

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