Intrusion detection in internet of things networks based on machine learning methods

Q3 Mathematics
T. Tatarnikova, P. Bogdanov
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引用次数: 1

Abstract

Introduction: The growing amount of digital data generated, among others, by smart devices of the Internet of Things makes it important to study the application of machine learning methods to the detection of network traffic anomalies, namely the presence of network attacks. Purpose: To propose a unified approach to detecting attacks at different levels of IoT network architecture, based on machine learning methods. Results: It was shown that at the wireless sensor network level, attack detection is associated with the detection of anomalous behavior of IoT devices, when the deviation of an IoT device behavior from its profile exceeds a predetermined level. Smart IoT devices are profiled on the basis of statistical characteristics, such as the intensity and duration of packet transmission, the proportion of retransmitted packets, etc. At the level of a local or global wired IoT network, data is aggregated and then analyzed using machine learning methods. Trained classifiers can become a part of a network attack detection system, making decisions about compromising a node on the fly. Models of classifiers of network attacks were experimentally selected both at the level of a wireless sensor network and at the level of a local or global wired network. The best results in terms of completeness and accuracy estimates are demonstrated by the random forest method for a wired local and/or global network and by all the considered methods for a wireless sensor network. Practical relevance: The proposed models of classifiers can be used for developing intrusion detection systems in IoT networks.
基于机器学习方法的物联网网络入侵检测
引言:物联网智能设备生成的数字数据数量不断增加,因此研究机器学习方法在检测网络流量异常(即网络攻击的存在)方面的应用变得非常重要。目的:基于机器学习方法,提出一种在物联网网络架构的不同级别检测攻击的统一方法。结果:研究表明,在无线传感器网络层面,当物联网设备的行为与其配置文件的偏差超过预定水平时,攻击检测与物联网设备异常行为的检测相关。智能物联网设备是根据统计特征进行分析的,如数据包传输的强度和持续时间、重传数据包的比例等。在本地或全球有线物联网网络层面,数据被聚合,然后使用机器学习方法进行分析。经过训练的分类器可以成为网络攻击检测系统的一部分,在运行中决定是否会危及节点。在无线传感器网络级别和本地或全局有线网络级别上都实验性地选择了网络攻击的分类器模型。有线本地和/或全局网络的随机森林方法以及无线传感器网络的所有考虑的方法证明了在完整性和准确性估计方面的最佳结果。实际相关性:所提出的分类器模型可用于开发物联网网络中的入侵检测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Informatsionno-Upravliaiushchie Sistemy
Informatsionno-Upravliaiushchie Sistemy Mathematics-Control and Optimization
CiteScore
1.40
自引率
0.00%
发文量
35
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