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Intrusion Detection Based on Dynamic Gemini Population DE-K-mediods Clustering on Hadoop Platform

机译:基于动态双子座群体DE-K-METIOS在Hadoop平台上的入侵检测

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摘要

In view of the fact that the existing intrusion detection system (IDS) based on clustering algorithm cannot adapt to the large-scale growth of system logs, a K-mediods clustering intrusion detection algorithm based on differential evolution suitable for cloud computing environment is proposed. First, the differential evolution algorithm is combined with the K-mediods clustering algorithm in order to use the powerful global search capability of the differential evolution algorithm to improve the convergence efficiency of large-scale data sample clustering. Second, in order to further improve the optimization ability of clustering, a dynamic Gemini population scheme was adopted to improve the differential evolution algorithm, thereby maintaining the diversity of the population while improving the problem of being easily trapped into a local optimum. Finally, in the intrusion detection processing of big data, the optimized clustering algorithm is designed in parallel under the Hadoop Map Reduce framework. Simulation experiments were performed in the open source cloud computing framework Hadoop cluster environment. Experimental results show that the overall detection effect of the proposed algorithm is significantly better than the existing intrusion detection algorithms.
机译:鉴于基于聚类算法的现有入侵检测系统(IDS)无法适应系统日志的大规模增长,提出了一种基于适用于云计算环境的差分演进的K-MEDIODS聚类入侵检测算法。首先,差分演进算法与K-MEDIODS聚类算法组合,以便使用差分演化算法的强大全球搜索能力来提高大规模数据样本聚类的收敛效率。其次,为了进一步提高聚类的优化能力,采用动态双子座人口方案来改善差分演化算法,从而保持人口的多样性,同时改善容易被困到局部最佳的问题。最后,在大数据的入侵检测处理中,优化的聚类算法在Hadoop地图下并行设计了减少框架。仿真实验是在开源云计算框架Hadoop集群环境中进行的。实验结果表明,所提出的算法的总体检测效果明显优于现有的入侵检测算法。

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