Intrusion detection in wireless sensor network using genetic K-means algorithm

G. Sandhya, A. Julian
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引用次数: 21

Abstract

Security of communication systems has become a crucial issue. A harder problem to crack in the field of Network Security is the identification and prevention of attacks. An effective Intrusion Detection System (IDS) is essential for ensuring network security. Intrusion detection systems include pattern analysis techniques to discover useful patterns of system features. These patterns describe user behavior. Anomalies are computed using the set of relevant system features. The derived patterns comprise inputs of classification systems, which are based on statistical and machine learning pattern recognition techniques. Clustering methods are useful in detection of unknown attack patterns. Elimination of insignificant features is essential for a simplified, faster and more accurate detection of attacks. Genetic algorithm based clustering offers identification of significant reduced input features. We present a conceptual framework for identifying attacks for intrusion detection by applying genetic K-means algorithm.
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基于遗传k -均值算法的无线传感器网络入侵检测
通信系统的安全已成为一个至关重要的问题。在网络安全领域,识别和预防攻击是一个比较难解决的问题。一个有效的入侵检测系统是保证网络安全的关键。入侵检测系统包括模式分析技术来发现系统特征的有用模式。这些模式描述了用户行为。使用相关系统特征集计算异常。衍生的模式包括基于统计和机器学习模式识别技术的分类系统的输入。聚类方法在检测未知攻击模式方面非常有用。消除无关紧要的特征对于简化、更快和更准确地检测攻击至关重要。基于遗传算法的聚类提供了显著减少输入特征的识别。本文提出了一种利用遗传k -均值算法识别入侵检测攻击的概念框架。
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