An efficient algorithm for anomaly intrusion detection in a network

Yerriswamy T , Gururaj Murtugudde
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引用次数: 6

Abstract

As the number of intrusions is increasing, intrusion detection of systems and network infrastructures Systems (IDS) is now an active research area to develop reliable and efficient detection and countering solutions. Finding the efficient methods for intrusion detection in information and network security is a crucial step and that in this study proposed an evolutionary approach for intrusion detection that is more efficient and effective. Evolutionary algorithms have been demonstrated in the IDS over the times, its maturity. Although most research is carried out on genetic algorithms which have their merits and demerits. In this paper, we present an optimized algorithm viz. Genetic-based Enhanced grey wolf optimization (GB-EGWO) Algorithm for intrusion detection. The number of feature selections for the proposed algorithm was selected from the new FS algorithm to increase IDS performance. In this study, the benchmark NSL-KDD network intrusion was applied to evaluate the proposed algorithm modified from the 99-data KDD cup to evaluate IDS issues. Simulation results prove its effectiveness over the existing work and have achieved better accuracy.

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一种有效的网络异常入侵检测算法
随着入侵数量的不断增加,系统和网络基础设施入侵检测系统(IDS)成为一个活跃的研究领域,旨在开发可靠、高效的检测和对抗方案。寻找有效的入侵检测方法是信息和网络安全中至关重要的一步,本文提出了一种更高效、更有效的入侵检测进化方法。进化算法在IDS中得到了不断的证明,其日趋成熟。尽管大多数研究都是在遗传算法上进行的,但遗传算法有其优点和缺点。本文提出了一种基于遗传的增强灰狼优化算法(GB-EGWO)的入侵检测算法。为了提高IDS的性能,所提出算法的特征选择数量是从新的FS算法中选择的。本研究以NSL-KDD网络入侵为基准,对基于99个数据的KDD杯改进后的IDS问题评估算法进行了评估。仿真结果证明了该方法的有效性,并取得了更好的精度。
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