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Information security technology for computer networks through classification of cyber-attacks using soft computing algorithms

机译:通过使用软计算算法进行网络攻击分类的计算机网络信息安全技术

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The Internet is the global platform which revolutionized the computer and communications domain. Although it becomes one of the most useful tools in people's lives, the presence of cyber-attacks that can cause damage, modification, and theft of vital data and information over this platform has increased. Utilization of soft-computing based on the behavior of the network may detect new or modified old attacks. An information security system is developed for the recognition the network infrastructure's behavior. This is limited to Normal, DoS, Probe, U2R, and R2L. The packets on the network are processed in MATLAB and analyze using Fuzzy Logic, Artificial Neural Network, and Fuzzy-Neural Network. Different tests are done with different datasets of varied parameters. The best model for each algorithm, which is rendered from the tests, is used for the information security system. The cyber-attacks were identified within a short period: 51.64us for Fuzzy Logic, 1.34us for Artificial Neural Network, and 14.23us for the Fuzzy Neural Network. The detection rate and accuracy of the three algorithms are 94.84%, 98.51%, 98.60% and 89.74%, 96.09%, 96.19% respectively. The Fuzzy Neural Network has the best performance which used the advantage of Fuzzy Logic and Artificial Neural Network.
机译:互联网是全球的平台,彻底改变了计算机和通信领域。虽然它成为人们生活中最有用的工具之一,可以造成损害,修改和重要的数据,并在此平台信息的窃取网络攻击的存在也增加了。利用软计算基于网络可以检测新的或修改旧的攻击行为。信息安全系统在识别网络基础设施的行为发展。这仅限于普通攻击,DoS探头,U2R,R2L和。网络上的数据包在MATLAB进行处理和使用模糊逻辑,神经网络,和模糊神经网络分析。不同的测试是在变化的参数的不同的数据集来完成。每种算法,这是从测试渲染的最佳模式,用于信息安全保障体系。的网络攻击被确定在短期内:51.64us为模糊逻辑,1.34us人工神经网络,和14.23us为模糊神经网络。三种算法的检出率和准确度是94.84 %,98.51 %,98.60 %和89.74 %,96.09 %,分别96.19 %。模糊神经网络具有使用模糊逻辑和神经网络的优点的最佳性能。

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