A Novel Approach to Prevention of Hello Flood Attack in IoT Using Machine Learning Algorithm

Serkan Gönen, Mehmet Ali Barişkan, Gökçe Karacayılmaz, Birkan Alhan, Ercan Nurcan Yilmaz, Harun Artuner, Erhan Sindiren
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Abstract

With the developments in information technologies, every area of our lives, from shopping to education, from health to entertainment, has transitioned to the cyber environment, defined as the digital environment. In particular, the concept of the Internet of Things (IoT) has emerged in the process of spreading the internet and the idea of controlling and managing every device based on IP. The fact that IoT devices are interconnected with limited resources causes users to become vulnerable to internal and external attacks that threaten their security. In this study, a Flood attack, which is an important attack type against IoT networks, is discussed. Within the scope of the analysis of the study, first of all, the effect of the flood attack on the system has been examined. Subsequently, it has been focused on detecting the at-tack through the K-means algorithm, a machine learning algorithm. The analysis results have been shown that the attacking mote where the flood attack has been carried out has been successfully detected. In this way, similar flood attacks will be detected as soon as possible, and the system will be saved from the attack with the most damage and will be activated as soon as possible.
利用机器学习算法预防物联网Hello Flood攻击的新方法
随着信息技术的发展,我们生活的每一个领域,从购物到教育,从健康到娱乐,都已经过渡到网络环境,被定义为数字环境。特别是物联网(IoT)的概念是在互联网的普及和基于IP控制和管理每一个设备的想法的过程中出现的。物联网设备与有限资源互联的事实导致用户容易受到威胁其安全的内部和外部攻击。本研究讨论了针对物联网网络的一种重要攻击类型——洪水攻击。在分析研究范围内,首先考察了洪水攻击对系统的影响。随后,它一直专注于通过K-means算法(一种机器学习算法)检测攻击。分析结果表明,成功检测出了进行洪水攻击的攻击点。这样可以在第一时间发现类似的洪水攻击,将系统从破坏最大的攻击中拯救出来,并在第一时间激活。
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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