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Network Traffic Analysis for Threat Detection in the Internet of Things

机译:互联网威胁检测网络流量分析

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摘要

As the prevalence of the Internet of Things (IoT) continues to increase, cyber criminals are quick to exploit the security gaps that many devices are inherently designed with. Users cannot be expected to tackle this threat alone, and many current solutions available for network monitoring are simply not accessible or can be difficult to implement for the average user, which is a gap that needs to be addressed. This article presents an effective signature-based solution to monitor, analyze, and detect potentially malicious traffic for IoT ecosystems in the typical home network environment by utilizing passive network sniffing techniques and a cloud application to monitor anomalous activity. The proposed solution focuses on two attack and propagation vectors leveraged by the infamous Mirai botnet, namely DNS and Telnet. Experimental evaluation demonstrates the proposed solution can detect 98.35 percent of malicious DNS traffic and 99.33 percent of Telnet traffic for an overall detection accuracy of 98.84 percent.
机译:随着物联网的普遍性(物联网)继续增加,网络犯罪分子很快就利用许多设备本质上设计的安全差距。用户不能单独解决这种威胁,并且许多可用于网络监控的当前解决方案根本无法访问,或者可能难以为普通用户实现,这是一种需要解决的差距。本文通过利用被动网络嗅探技术和云应用来监测异常活动,提出了一种有效的基于签名的解决方案,用于监视典型的家庭网络环境中的IOT生态系统的可能性恶意流量。所提出的解决方案侧重于臭名昭着的Mirai僵尸网络,即DNS和Telnet的两次攻击和传播矢量。实验评估证明了所提出的解决方案可以检测可恶毒DNS流量的98.35%,而且对Telnet流量的99.33%的整体检测精度为98.84%。

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