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Wireless Network Attack Defense Algorithm Using Deep Neural Network in Internet of Things Environment

机译:物联网环境中基于深度神经网络的无线网络攻击防御算法

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摘要

Aiming at the nonlinearity and uncertainty of the information security threat risk assessment system in the IoT environment, a wireless network attack defense method using deep neural network combined with game model is designed. Firstly, according to the topology information of the network, the reachability relationship and the vulnerability information of the network, the method generates the state attack and defense map of the network. Based on the state attack and defense map, based on the non-cooperative non-zero-sum game model, an optimal attack and defense decision algorithm is proposed. Combined with the prevention and control measures of the vulnerable points, the optimal attack and defense model is generated. Then, the information security risk factor index is quantified by the fuzzy system, and the output of the fuzzy system is input into the radial basis function (RBF) neural network model. The particle swarm optimization algorithm is used to optimize and train the parameters of the RBF neural network. Finally, an optimized defense model is obtained. The simulation results show that the wireless network attack defense algorithm using deep neural network combined with game model can solve the defects of subjective randomness and fuzzy conclusion of traditional wireless network attack defense methods. The average error is less than 2%, and it is more traditional than Machine learning algorithms have higher fitting accuracy, greater learning ability, and faster convergence.
机译:针对物联网环境下信息安全威胁评估系统的非线性和不确定性,设计了一种基于深度神经网络与博弈模型相结合的无线网络攻击防御方法。首先,根据网络的拓扑信息,网络的可达性关系和脆弱性信息,生成网络的状态攻防图。基于状态攻防图,基于非合作非零和博弈模型,提出了一种最优的攻防决策算法。结合脆弱点的防治措施,产生了最优的攻防模型。然后,通过模糊系统对信息安全风险因子指标进行量化,并将模糊系统的输出输入到径向基函数(RBF)神经网络模型中。粒子群优化算法用于优化和训练RBF神经网络的参数。最后,获得了优化的防御模型。仿真结果表明,采用深度神经网络与博弈模型相结合的无线网络攻击防御算法可以解决传统无线网络攻击防御方法的主观随机性和模糊结论的缺陷。平均误差小于2%,比机器学习算法更传统。机器学习算法具有更高的拟合精度,更高的学习能力和更快的收敛速度。

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