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A Scalable Platform for Enabling the Forensic Investigation of Exploited IoT Devices and Their Generated Unsolicited Activities

机译:一个可扩展的平台,用于实现对被利用物联网设备的法医调查及其生成的未经请求的活动

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摘要

The analysis of large-scale cyber attacks, which utilized millions of exploited Internet of Things (IoT) devices to perform malicious activities, highlights the significant role of compromised IoT devices in enabling evasive and effective attacks at scale. Motivated by the shortage of empirical data related to the deployment of IoT devices, and the lack of understanding about compromised devices and their unsolicited activities, in this paper, we leverage a big data analytics framework (Apache Spark) to design and develop a scalable system for automated detection of compromised IoT devices and characterization of their unsolicited activities. The system utilizes IoT device information and passive network measurements obtained from a large network telescope, while implementing an array of data-driven methodologies rooted in data mining and machine learning techniques, to provide a macroscopic view of IoT-generated malicious activities. We evaluate the system with more than 4TB of passive network measurements and demonstrate its effectiveness in the network forensic investigation of compromised devices and their activities, in near real-time. In addition, we empirically analyze and elaborate on the capabilities of the developed system as a scalable infrastructure, which can support a number of applications that enable IoT-centric forensics. (C) 2020 The Author(s). Published by Elsevier Ltd.
机译:对大规模网络攻击的分析,利用数百万利用的物联网(IOT)设备来执行恶意活动,突出了受损的物联网设备在实现尺度升高和有效攻击方面的显着作用。在本文中,缺乏关于IOT设备部署的经验数据的缺乏,以及对受损设备及其未经请求的活动缺乏了解,我们利用大数据分析框架(Apache Spark)来设计和开发可扩展系统用于自动检测受损的物联网设备和其未经请求的活动的表征。该系统利用从大型网络望远镜获得的IOT设备信息和被动网络测量,同时实现源于数据挖掘和机器学习技术的数据驱动方法阵列,以提供IOT生成的恶意活动的宏观视图。我们评估了超过4TB的被动网络测量系统,并在近期实时展示了对受损设备及其活动的网络法医调查的有效性。此外,我们凭经验地分析和详细说明了发达系统作为可扩展基础架构的能力,这可以支持许多使能IOT标记取证的应用程序。 (c)2020提交人。 elsevier有限公司出版

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