An Effective FOG Computing Based Distributed Forecasting of Cyber-Attacks in Internet of Things

Vandana Roy
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Abstract

Existing cloud based security procedures are insufficient to manage the ever-increasing assaults in IoT due to the volume of data generated and the processing latency. IoT applications are vulnerable to cyberattacks, and some of these assaults might have catastrophic results if not stopped or mitigated quickly enough. As a result, IoT calls for self-protect security systems that can automatically interpret attacks in IoT traffic and efficiently handle the attack situation by activating the proper response quickly. Fog computing satisfies this need because it can embed the intelligent self-protection mechanism in the distributed fog nodes, allowing them to swiftly deal with the assault scenario and safeguard the IoT application with little in the way of human interaction. At the fog nodes, the forecasting method employs distributed Gaussian process regression. The cyber-attack may be predicted more quickly and with less mistake for both low- and high-rate attacks thanks to the local forecasting about the IoT traffic characteristics at fog node. One of the fundamental necessities of an IoT security mechanism is the ability to forecast attacks in a timely manner with a high degree of accuracy, and the simulation results highlight this fact.
基于有效雾计算的物联网网络攻击分布式预测
由于生成的数据量和处理延迟,现有的基于云的安全程序不足以管理物联网中不断增加的攻击。物联网应用很容易受到网络攻击,如果不能及时阻止或缓解,其中一些攻击可能会造成灾难性的后果。因此,物联网需要自我保护的安全系统,这些系统可以自动解释物联网流量中的攻击,并通过快速激活适当的响应来有效地处理攻击情况。雾计算可以满足这一需求,因为它可以在分布式雾节点中嵌入智能自我保护机制,使它们能够快速应对攻击场景,并在很少的人工交互方式下保护物联网应用。在雾节点处,预测方法采用分布高斯过程回归。通过对雾节点物联网流量特征的局部预测,可以更快、更少地预测低速率和高速率的网络攻击。物联网安全机制的基本要求之一是能够及时、高精度地预测攻击,仿真结果突出了这一事实。
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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CiteScore
0.70
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