入侵检测系统采用模糊遗传算法

Yogita Danane, T. Parvat
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引用次数: 31

摘要

计算机安全已成为当今生活的重要组成部分。不仅单个计算机系统,而且广泛的计算机网络系统也需要安全。为了实现系统的安全,入侵检测系统(IDS)起着至关重要的作用。IDS是一种监视计算机网络并检测系统或网络中发生的可疑活动的软件。入侵检测的过程包括检测入侵。入侵是攻击者试图进行的可疑活动。提出了一种基于模糊遗传的网络入侵检测方法。文中给出了系统在精度、执行时间和内存分配方面的结果。为了实现和测量系统的性能,使用了KDD99基准数据集。KDD99数据集是研究人员在各种网络安全研究中使用的基准数据集。遗传算法包括一个开发和收集,它使用类似染色体的数据结构,并使用选择、交叉和突变算子开发染色体。模糊规则对网络攻击数据进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion detection system using fuzzy genetic algorithm
Computer security has become an important part of the day today's life. Not only single computer systems but an extensive network of the computer system also requires security. In achieving the safety of the systems, an Intrusion Detection System (IDS) plays a significant role. IDS is a software that monitors the computer network and detects the suspicious activities that occur in the systems or network. The process of intrusion detection includes detecting intrusion. Intrusion is a suspicious activity attempted by the attacker. This paper presents a fuzzy-genetic approach to detecting network intrusion. Paper presents the results of the proposed system in terms of accuracy, execution time, and memory allocation. To implement and measure the performance of the system the KDD99 benchmark dataset is used. The KDD99 dataset is a benchmark dataset that researchers use in various network security researches. Genetic algorithm includes a development and collection that uses a chromosome like data structure and develop the chromosomes using selection, crossover and mutation operators. Fuzzy rule sorts network attack data.
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