IoT Botnet Detection Based on the Behaviors of DNS Queries

Chun-I Fan, Cheng-Han Shie, Che-Ming Hsu, Tao Ban, Tomohiro Morikawa, Takeshi Takahashi
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引用次数: 1

Abstract

In recent years, the Botnet attacks towards the Internet of Things have been considered to be the attacks with the most extensive impact on internet infrastructure. Many well-known enterprises or organizations have become victims. The Internet of Things Botnet uses a large number of connected devices to attack a target. For example, infected devices can be used to perform DDoS attacks on certain (critical) network servers. Before the infected hosts receive any commands, they must obtain the IP address of the control and command server. Hence, there are lots of behaviors and information of IoT Botnet hiding in the DNS traffic. Considering that situation, we utilize features captured from the DNS queries to analyze whether IoT Botnet has infected a device or not. We found that the DNS queries of an infected device will be issued in a specific periodical time frequency. Based on the features, a novel IoT Bonet detection scheme is presented in the manuscript. As compared to other works, the proposed scheme significantly reduces the computation cost by applying Shannon's entropy and the variances among the DNS queries.
基于DNS查询行为的物联网僵尸网络检测
近年来,针对物联网的僵尸网络攻击被认为是对互联网基础设施影响最广泛的攻击。许多知名企业或组织已经成为受害者。物联网僵尸网络利用大量连接的设备对目标进行攻击。例如,受感染的设备可以对某些(关键)网络服务器进行DDoS攻击。被感染的主机在接收命令前,必须先获取控制和命令服务器的IP地址。因此,在DNS流量中隐藏着大量物联网僵尸网络的行为和信息。考虑到这种情况,我们利用从DNS查询中捕获的功能来分析物联网僵尸网络是否感染了设备。我们发现受感染设备的DNS查询会以特定的周期时间频率发出。基于这些特征,本文提出了一种新的物联网Bonet检测方案。该方案利用Shannon’s熵和DNS查询间的方差,大大降低了计算成本。
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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