Muhammad Hassaan Khalid, Hana Sharif, Faisal Rehman, Muhammad Naeem Ullah, Shahbaz Shaukat, Hadia Maqsood, Chaudhry Nouman Ali, Ali Hussain, Irfana Iftikhar
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引用次数: 0
摘要
互联网设备在人类生活的许多领域的使用不断增加,需要一种适当的方法来保护这些物联网设备免受网络攻击和漏洞。在这方面,深度学习神经网络是一种非常有用和有益的方法,可以在许多方面为互联网设备提供保护。本研究的目的是系统地研究和检验神经网络策略在不同基于互联网的设备安全用例中的研究背景。我们把我们所研究的影响放在许多不同的群体中,以表明这项研究的不足之处。这一特定的研究或发现主要捕获了Science Direct、ACM Digital Library、IEEEXplore和Springer Link四个数据库中与“Deep neural networks”、“Cyber risks”和“IOT”相关的文章。这些研究涉及3个主要研究,涉及安全方面,他们自己的深度学习网络设计和占用的数据集。最后一轮是找出未来需要检查的漏洞,以及物联网安全场景中的漏洞和缺陷。
A Brief Overview of Deep Learning Approaches for IoT Security
The continuous increasing usage of internet devices in many areas of human life is continuously growing and demanding a proper method to protect these IoT devices from cyber-attacks and vulnerabilities. In this aspect, deep learning neural networks are a very helpful and beneficial method to provide protection to internet devices in many aspects. This study's objective is to systematically research and examine the background of research about neural networks tactics functional to different internet-based devices' safety use-cases. We put the influences we looked at into many different groups to show where this research is lacking. This particular research or findings mainly captures the articles related to “Deep neural networks”, “Cyber risks” and “IOT” in four databanks, namely Science Direct, ACM Digital Library, IEEEXplore and Springer Link. These studies concern 3 main studies, which involve safety aspects, their own Deep Learning network designs, and the occupied datasets. The final round is to find out the loopholes to be examined in the future and vulnerabilities and drawbacks in the IoT security scenario.