利用神经模糊训练智能入侵检测系统

Biswajit Panja, Olugbenga Ogunyanwo, Priyanka Meharia
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引用次数: 13

摘要

入侵检测系统将计算机活动分为两大类:正常活动和可疑活动。为了实现分类,入侵检测系统使用包括神经网络和神经模糊网络在内的软件计算技术对网络活动进行分类,并指定正在产生何种类型的攻击。神经模糊分类器用于对初始网络流量进行初始分类。一个推理系统,模糊推理系统进一步用于确定活动是正常的还是恶意的。高效的IDS系统是那些能够减少误报并产生高速率攻击检测的系统。然而,模糊推理系统使用人类的知识来创建模糊规则。为了引入一种更准确的网络流量分类方法,我们将遗传算法与ANFIS结合使用,以优化数据分类并获得最佳结果。遗传算法使用一组遗传操作符,如突变、交叉和选择,在当前种群中复制相似的模式,这些模式将被反复使用,直到满足特定的标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Training of intelligent intrusion detection system using neuro fuzzy
Intrusion detection systems classify computer activities into two main categories: normal and suspicious activities. In order to achieve the classification, Intrusion detection systems use software computing techniques including neural networks and neuro fuzzy networks to categorize network activities and specify what category of attack is being generated. Neuro-Fuzzy classifiers are used for the initial classification of the initial network traffic. An inference system, Fuzzy inference systems is further used to determine whether the activity is normal or malicious. Efficient IDS systems are those capable of reducing false positives and generate high rate attack detection. However, fuzzy inference systems use human knowledge to create their fuzzy rule. In order to introduce a more accurate way of classifying network traffic, we introduce the use of Genetic Algorithms in conjunction with ANFIS so as to optimize data classification and obtain the best results. Genetic algorithms use a set of genetic operators such as mutation, crossover and selection on current population to reproduce similar patterns that will be used repeatedly until a particular criterion is met.
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