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基于CNN-LSTM的铁路网络安全态势感知模型研究

Railway network security situation awareness model based on CNN-LSTM

  • 摘要: 针对当前铁路网络安全态势感知中存在的检测率低、实时监控能力不足等问题,提出了一种基于卷积神经网络−长短期记忆网络(CNN-LSTM)的铁路网络安全态势感知模型。该模型利用CNN的空间特征提取能力,结合LSTM的时间序列建模优势,通过全样本训练实现异常检测值的精准输出。从异常检测性能、态势感知效果和系统可用性这3个维度出发,选取9项关键指标进行综合评估。实验结果表明,该模型对异常攻击检测的准确率达97.2%,同时保持2.5%的低误报率。该研究为提升铁路网络安全态势感知水平提供了有效的技术解决方案。

     

    Abstract: This paper proposed a railway network security situational awareness model based on Convolutional Neural Network Long Short Term Memory Network (CNN-LSTM) to address the problems of low detection rate and insufficient real-time monitoring capability in current railway network security situational awareness. This model utilized the spatial feature extraction capability of CNN and combined the time series modeling advantages of LSTM to implement accurate output of anomaly detection values through full sample training. The paper selected 9 key indicators for comprehensive evaluation from three dimensions: anomaly detection performance, situational awareness effectiveness, and system availability. The experimental results show that the model has an accuracy of 97.2% in detecting abnormal attacks, while maintaining a low false alarm rate of 2.5%. This study provides an effective technical solution to enhance the awareness of railway network security situation.

     

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