基于MSNN模型的网络安全入侵检测
投稿时间:2018-10-10  修订日期:2018-11-12  点此下载全文
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作者单位邮编
朱韶平* 珠海城市职业技术学院 电子信息工程学院 519090
肖永良 湖南财政经济学院 信息管理系 
党艳军 珠海城市职业技术学院 电子信息工程学院 
基金项目:湖南省教育科学规划课题(XJK015BGD007);湖南省自然科学(2017JJ2015);湖南省社会科学(16YBA049)
中文摘要:为解决网络系统入侵行为升级快,隐蔽性强和随机性高等严重安全问题,结合入侵检测系统信息的特点,提出一种基于MSNN模型的入侵检测算法。首先提取系统调用顺序特性和频度特性,然后利用多级Sigmoid神经网络中的Sigmoid神经元具有微调网络的作用,且能让神经元产生多元反应进行多类分类,构建类似于大脑神经突触网络信息处理的MSNN模型,实现网络安全入侵检测。实验结果表明,该算法的检测精度高、抗干扰能力强,具有良好的检测效果和较高的应用价值。
中文关键词:网络安全  入侵检测  MSNN模型  系统调用顺序特性  系统调用频度特性
 
Intrusion Detection of Network Security Based on MSNN Model
Abstract:In order to solve the serious security problems of network system intrusion behavior, such as rapid upgrade, strong concealment and high randomness, an intrusion detection algorithm based on MSNN model is proposed in combination with the characteristics of intrusion detection system information. First extract the system transfer sequence characteristics and frequency characteristics, then the algorithm use Sigmoid neurons in the multilevel Sigmoid neural network to fine-tune the network and enable the neurons to generate multiple responses for multiple classification, so as to build an MSNN model similar to the brain''s synaptic network information processing and realize network security intrusion detection. The experimental results show that the proposed algorithm has high precision and strong anti-interference ability, and has a good detection effect and high application.
keywords:network security  intrusion detection  MSNN model  the order characters of system  the frequency characters of system
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