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Classifying network abnormalities into faults and attacks in IoT-based cyber physical systems using machine learning

机译:使用机器学习将网络异常分类为基于IOT的网络物理系统的故障和攻击

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摘要

Cyber Physical Systems (CPS) integrate physical processes with electronic computing devices and digital communication channels. Their proper operation might be affected by two main sources of abnormality, security attacks and failures. The topics of fault diagnosis and security attack analysis in CPS have been studied extensively in a stand-alone manner. However, considering the co-existence of both sources of abnormality, faults and attacks, in a system and being able to differentiate among them, is an important and timely problem not yet addressed adequately. In this work, we study the internal communication environment of an Energy Aware Smart Home (EASH) system. More specifically, we formally define the problem of differentiating between component failures and network attacks in EASH, based on their effect on the communication behaviour. We formally show the correlation between such abnormality sources and provide a machine learning based framework for the differentiation problem. Our framework is evaluated using a simulation as well as a real-time testbed environment, demonstrating a promising accuracy in classification of over 85%. Based on the obtained experimental results, we also provide a detailed analysis on the considered classes and features used in the proposed approach, which can further improve the classification accuracy. (c) 2020 Elsevier B.V. All rights reserved.
机译:网络物理系统(CPS)将物理过程与电子计算设备和数字通信通道集成。他们的正确操作可能受到两个主要异常,安全攻击和失败的影响。 CP中的故障诊断和安全攻击分析的主题已被广泛地以独立的方式研究。然而,考虑到一个异常,故障和攻击来源的共存,在系统中和能够区分中间,是一个重要的,及时的问题尚未充分解决。在这项工作中,我们研究了能量识别智能家庭(EASH)系统的内部通信环境。更具体地说,我们基于对通信行为的影响,正式定义了区分机故障和在EASH中的网络攻击之间的问题。我们正式地示出了这种异常源之间的相关性,并为差分问题提供了一种基于机器学习的框架。我们的框架是使用模拟和实时测试的环境评估的,展示了超过85%的分类所需的准确性。基于所获得的实验结果,我们还提供了关于所考虑的方法和特征的详细分析,该方法可以进一步提高分类准确性。 (c)2020 Elsevier B.v.保留所有权利。

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