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ELNIDS: Ensemble Learning based Network Intrusion Detection System for RPL based Internet of Things

机译:elnids:基于rpl基于RPL的网络入侵检测系统

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Internet of Things is realized by a large number of heterogeneous smart devices which sense, collect and share data with each other over the internet in order to control the physical world. Due to open nature, global connectivity and resource constrained nature of smart devices and wireless networks the Internet of Things is susceptible to various routing attacks. In this paper, we purpose an architecture of Ensemble Learning based Network Intrusion Detection System named ELNIDS for detecting routing attacks against IPv6 Routing Protocol for Low-Power and Lossy Networks. We implement four different ensemble based machine learning classifiers including Boosted Trees, Bagged Trees, Subspace Discriminant and RUSBoosted Trees. To evaluate proposed intrusion detection model we have used RPL-NIDDS17 dataset which contains packet traces of Sinkhole, Blackhole, Sybil, Clone ID, Selective Forwarding, Hello Flooding and Local Repair attacks. Simulation results show the effectiveness of the proposed architecture. We observe that ensemble of Boosted Trees achieve the highest Accuracy of 94.5% while Subspace Discriminant method achieves the lowest Accuracy of 77.8 % among classifier validation methods. Similarly, an ensemble of RUSBoosted Trees achieves the highest Area under ROC value of 0.98 while lowest Area under ROC value of 0.87 is achieved by an ensemble of Subspace Discriminant among all classifier validation methods. All the implemented classifiers show acceptable performance results.
机译:事物的互联网是由大量的异构智能设备来实现,这些设备在互联网上彼此相互识别,以控制物理世界。由于开放性质,智能设备和无线网络的全局连接和资源受限的性质,信息互联网互联网易于各种路由攻击。在本文中,我们目的是一种名为ELNID的基于集合学习的网络入侵检测系统的体系结构,用于检测用于低功耗和有损网络的IPv6路由协议的路由攻击。我们实施了四种不同的基于集合的机器学习分类器,包括增强树木,袋装树木,子空间判别和鲁布罗斯的树木。为了评估建议的入侵检测模型,我们使用了RPL-NIDDS17数据集,其中包含污水槽,黑洞,Sybil,克隆ID,选择性转发,Hello洪水和本地修复攻击的数据包痕迹。仿真结果表明了拟议建筑的有效性。我们观察提振树是合奏达到94.5%的最高准确度,而子空间判别方法实现了77.8%的分类验证方法中最低的精度。类似地,Rusoosted树木的集合实现了ROC值下的最高面积为0.98,而在所有分类器验证方法中,子空间判别的集合可以实现0.87的最低面积。所有实现的分类器都显示了可接受的性能结果。

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