Distributed Intrusion Detection System for Wireless Sensor Networks

K. Medhat, R. Ramadan, I. Talkhan
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引用次数: 4

Abstract

Wireless Sensor Networks is extensively used in many of applications related to different fields. Some of those applications deal with confidential and critical data that must be protected from unauthorized access. Some other systems use WSNs that are deployed in very harsh environments with limited energy resources. Those systems cannot tolerate network failures that can be caused by network intruders. In this paper, an efficient intrusion detection model is introduced. The model uses intelligent techniques to detect intrusions. Two different architectures are introduced. The first architecture represents the level of sensor node, sink node, and base station. The second architecture represents the levels of sensor and sink nodes. This work proposes two intrusion detection algorithms, one uses a supervised learning mechanism to be used on the level of the sensor node and the other uses an unsupervised learning mechanism to be used on the levels of both the sink node and base station. The output of the algorithms is a set of detection rules which are structured in the form of binary tree. The introduced algorithms provided a high detection accuracy using less number of selected features, compared to previous work for intrusion detection, which decreases the complexity and the processing time. The proposed learning algorithms used only 10% of the data for training. An enhancement for J48 classification algorithm is also introduced which decreases the size of the algorithm's decision tree and makes it suitable to be used for intrusion detection in WSNs.
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无线传感器网络分布式入侵检测系统
无线传感器网络广泛应用于各个领域。其中一些应用程序处理必须防止未经授权访问的机密和关键数据。其他一些系统使用wsn,部署在非常恶劣的环境中,能源有限。这些系统不能容忍可能由网络入侵者引起的网络故障。本文提出了一种高效的入侵检测模型。该模型使用智能技术来检测入侵。介绍了两种不同的体系结构。第一个体系结构表示传感器节点、汇聚节点和基站的级别。第二个体系结构表示传感器和接收节点的级别。本文提出了两种入侵检测算法,一种是在传感器节点级别使用监督学习机制,另一种是在汇聚节点和基站级别使用无监督学习机制。算法的输出是一组以二叉树形式构成的检测规则。与以往的入侵检测方法相比,所引入的算法使用较少的特征来提供较高的检测精度,从而降低了复杂性和处理时间。所提出的学习算法只使用了10%的数据进行训练。本文还对J48分类算法进行了改进,减小了算法决策树的大小,使其更适合于wsn中的入侵检测。
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