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A distributed ensemble design based intrusion detection system using fog computing to protect the internet of things networks

机译:基于分布式集合设计的入侵检测系统,使用FOG计算保护物联网网络

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With the development of internet of things (IoT), capabilities of computing, networking infrastructure, storage of data and management have come very close to the edge of networks. This has accelerated the necessity of Fog computing paradigm. Due to availability of Internet, most of our business operations are integrated with IoT platform. Fog computing has enhanced the strategy of collecting and processing, huge amount of data. On the other hand, attacks and malicious activities has adverse consequences on the development of IoT, Fog, and cloud computing. This has led to development of many security models using fog computing to protect IoT network. Therefore, for dynamic and highly scalable IoT environment, a distributed architecture based intrusion detection system (IDS) is required that can distribute the existing centralized computing to local fog nodes and can efficiently detect modern IoT attacks. This paper proposes a novel distributed ensemble design based IDS using Fog computing, which combines k-nearest neighbors, XGBoost, and Gaussian naive Bayes as first-level individual learners. At second-level, the prediction results obtained from first level is used by Random Forest for final classification. Most of the existing proposals are tested using KDD99 or NSL-KDD dataset. However, these datasets are obsolete and lack modern IoT-based attacks. In this paper, UNSW-NB15 and actual IoT-based dataset namely, DS2OS are used for verifying the effectiveness of the proposed system. The experimental result revealed that the proposed distributed IDS with UNSW-NB15 can achieve higher detection rate upto 71.18% for Backdoor, 68.98% for Analysis, 92.25% for Reconnaissance and 85.42% for DoS attacks. Similarly, with DS2OS dataset, detection rate is upto 99.99% for most of the attack vectors.
机译:随着物联网(物联网)的发展,计算的能力,网络基础设施,数据和管理的存储已经非常接近网络边缘。这加速了雾计算范式的必要性。由于Internet的可用性,我们的大多数业务运营与IOT平台集成。雾计算增强了收集和处理的策略,数据量大。另一方面,攻击和恶意活动对IOT,FOG和云计算的发展具有不利影响。这导致使用雾计算来保护许多安全模型来保护IOT网络。因此,对于动态和高度可扩展的物联网环境,需要一种基于分布式的架构的入侵检测系统(ID),可以将现有的集中计算分发到本地雾节点,并有效地检测现代的IOT攻击。本文提出了一种使用雾计算的新型分布式集合设计的ID,该设计将K-Collest邻居,XGBoost和高斯天真贝内斯与第一级别学习者结合在一起。在二级,从第一级获得的预测结果由随机林使用最终分类。使用KDD99或NSL-KDD数据集进行大多数现有提案。但是,这些数据集已过时并缺乏现代的基于物联网攻击。在本文中,UNSW-NB15和实际的基于IOT的数据集即,DS2OS用于验证所提出的系统的有效性。实验结果表明,拟议的分布式ID与UNSW-NB15可以获得高达71.18%的较高71.18%,分析68.98%,侦察的92.25%,DOS攻击的85.42%。同样,对于DS2OS数据集,对于大多数攻击向量,检测率高达99.99%。

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