Intrusion Detection Method Based on Improved Neural Network

Tang Hai-he
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引用次数: 3

Abstract

In order to improve the ability of network intrusion detection and blind separation, an improved network intrusion detection algorithm is proposed based on improved neural network. The network intrusion information transmission channel model is constructed, the feature extraction and signal separation of network intrusion are carried out by adaptive weighted control method, and the correlation parameters of network intrusion are estimated by combining time-frequency joint estimation method. The node location and intrusion intensity of network intrusion are calculated accurately, and intrusion detection is carried out according to the result of parameter estimation. BP neural network is used to classify and identify network intrusion, the accuracy of intrusion detection and the ability of blind source location are improved. The simulation results show that the accuracy of network intrusion detection is higher, and the location accuracy of intrusion information source is higher, and the network security performance is improved.
基于改进神经网络的入侵检测方法
为了提高网络入侵检测和盲分离的能力,提出了一种基于改进神经网络的改进网络入侵检测算法。建立了网络入侵信息传输通道模型,采用自适应加权控制方法对网络入侵进行特征提取和信号分离,结合时频联合估计方法对网络入侵相关参数进行估计。准确计算网络入侵的节点位置和入侵强度,并根据参数估计结果进行入侵检测。利用BP神经网络对网络入侵进行分类识别,提高了入侵检测的准确性和盲源定位的能力。仿真结果表明,该方法提高了网络入侵检测的精度,提高了入侵信息源的定位精度,提高了网络安全性能。
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