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一种用于无线传感器网络和移动自组网的基于跨层异常检测的入侵检测系统

A Cross-Layer, Anomaly-Based IDS for WSN and MANET.

作者信息

Amouri Amar, Morgera Salvatore D, Bencherif Mohamed A, Manthena Raju

机构信息

Department of Electrical Engineering, University of South Florida, Tampa, FL 33620, USA.

College of Computer & Information Sciences, King Saud University, P.O. Box 51178, Riyadh 11543, Saudi Arabia.

出版信息

Sensors (Basel). 2018 Feb 22;18(2):651. doi: 10.3390/s18020651.

Abstract

Intrusion detection system (IDS) design for mobile adhoc networks (MANET) is a crucial component for maintaining the integrity of the network. The need for rapid deployment of IDS capability with minimal data availability for training and testing is an important requirement of such systems, especially for MANETs deployed in highly dynamic scenarios, such as battlefields. This work proposes a two-level detection scheme for detecting malicious nodes in MANETs. The first level deploys dedicated sniffers working in promiscuous mode. Each sniffer utilizes a decision-tree-based classifier that generates quantities which we refer to as correctly classified instances (CCIs) every reporting time. In the second level, the CCIs are sent to an algorithmically run supernode that calculates quantities, which we refer to as the accumulated measure of fluctuation (AMoF) of the received CCIs for each node under test (NUT). A key concept that is used in this work is that the variability of the smaller size population which represents the number of malicious nodes in the network is greater than the variance of the larger size population which represents the number of normal nodes in the network. A linear regression process is then performed in parallel with the calculation of the AMoF for fitting purposes and to set a proper threshold based on the slope of the fitted lines. As a result, the malicious nodes are efficiently and effectively separated from the normal nodes. The proposed scheme is tested for various node velocities and power levels and shows promising detection performance even at low-power levels. The results presented also apply to wireless sensor networks (WSN) and represent a novel IDS scheme for such networks.

摘要

移动自组织网络(MANET)的入侵检测系统(IDS)设计是维护网络完整性的关键组成部分。对于此类系统,尤其是部署在高度动态场景(如战场)中的MANET,以最少的数据可用性进行快速部署IDS功能是一项重要要求。这项工作提出了一种用于检测MANET中恶意节点的两级检测方案。第一级部署工作在混杂模式的专用嗅探器。每个嗅探器利用基于决策树的分类器,该分类器在每次报告时生成我们称为正确分类实例(CCI)的数量。在第二级,将CCI发送到通过算法运行的超级节点,该超级节点计算我们称为每个被测节点(NUT)接收到的CCI的累积波动量度(AMoF)的数量。这项工作中使用的一个关键概念是,代表网络中恶意节点数量的较小规模群体的变异性大于代表网络中正常节点数量的较大规模群体的方差。然后,在计算AMoF的同时并行执行线性回归过程,以进行拟合并根据拟合线的斜率设置适当的阈值。结果,恶意节点被有效地与正常节点分离。所提出的方案针对各种节点速度和功率水平进行了测试,即使在低功率水平下也显示出有希望的检测性能。所呈现的结果也适用于无线传感器网络(WSN),并代表了此类网络的一种新颖IDS方案。

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