Research on network intrusion detection security based on improved extreme learning algorithms and neural network algorithms

Zhenjun Dai
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引用次数: 1

Abstract

In order to improve the ability of network fuzzy intrusion detection, a network intrusion detection method based on improved extreme learning algorithm and neural network algorithm is proposed to improve the security of the network. ARMA and other linear detection methods are used to construct the network intrusion signal model, and the nonlinear time series and chaos analysis methods are used to extract the feature of network intrusion and big data information analysis. The limit learning method is used for active detection of network intrusion; the adaptive learning method is used for iterative analysis of network intrusion detection, and the correlation characteristic decomposition method is used to improve the convergence of network intrusion detection. The fuzzy neural network algorithm is used to classify the network intrusion features to improve the intrusion detection performance. The simulation results show that this method has high accuracy and strong anti-jamming ability; it has good application value in network security.
基于改进极限学习算法和神经网络算法的网络入侵检测安全性研究
为了提高网络模糊入侵检测的能力,提出了一种基于改进极值学习算法和神经网络算法的网络入侵检测方法,以提高网络的安全性。利用ARMA等线性检测方法构建网络入侵信号模型,利用非线性时间序列和混沌分析方法提取网络入侵特征并进行大数据信息分析。采用极限学习方法对网络入侵进行主动检测;采用自适应学习方法对网络入侵检测进行迭代分析,采用相关特征分解方法提高网络入侵检测的收敛性。采用模糊神经网络算法对网络入侵特征进行分类,提高入侵检测性能。仿真结果表明,该方法精度高,抗干扰能力强;在网络安全方面具有很好的应用价值。
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