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Security situation prediction method of industrial control network based on ant colony-RBF neural network

机译:基于蚁群-RBF神经网络的工业控制网络安全状况预测方法

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To understand the future trend of network security, the field of network security began to introduce the concept of NSSA(Network Security Situation Awareness). This paper implements the situation assessment model by using game theory algorithms to calculate the situation value of attack and defense behavior. After analyzing the ant colony algorithm and the RBF neural network, the defects of the RBF neural network are improved through the advantages of the ant colony algorithm, and the situation prediction model based on the ant colony-RBF neural network is realized. Finally, the model was verified experimentally.
机译:要了解网络安全的未来趋势,网络安全领域开始介绍NSSA的概念(网络安全局势意识)。本文通过使用博弈论算法来计算攻击和防御行为的情况价值来实现情况评估模型。在分析蚁群算法和RBF神经网络之后,通过蚁群算法的优点来改善RBF神经网络的缺陷,并且实现了基于蚁群-RBF神经网络的情况预测模型。最后,该模型实验验证。

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