基于生存簇识别和预测的生存态势感知模型

Survival Situation Awareness Model Based on Survival Cluster Recognition and Prediction

  • 摘要: 可生存系统安全态势的形势日趋严峻,增强生存性的前提是识别出目标系统的生存态势,该文构建了一种基于生存簇识别和预测的生存态势感知模型。首先,对生存态势数据采用Ward增强聚类法实现不同服务等级生存簇的分类和识别;其次,使用自回归积分滑动平均(ARIMA)模型预测目标系统生存态势的未来趋势,并对预测结果进行了残差修正;最后,结合事前识别和事后预测实现了对可生存系统生存态势的感知。仿真实验表明,该模型具有良好识别效果和较高的预测准确度。

     

    Abstract: The security situation of survivable system is becoming more and more serious. The premise of enhancing survivability is to recognize the survival situation of the target system. A survival situation awareness model is constructed based on survival cluster recognition and prediction. Firstly, the improved Ward clustering method is used to realize the classification and recognition of different service levels. Secondly, the autoregressive integrated moving average (ARIMA) model is used to predict the future trend of the target system's survival situation and the residuals of the prediction results are corrected. Finally, the survival situation of survivable system is realized by the combination of pre-recognition and post-prediction. Simulation results show that the proposed model has better recognition effect and higher prediction accuracy.

     

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