Department of Computer Science and Information Technology, Central University of Jammu, Bagla J&K 181143, India.
Department of Higher Education, J&K Govt., Jammu 180001, India.
Sensors (Basel). 2021 Mar 5;21(5):1809. doi: 10.3390/s21051809.
The escalated growth of the Internet of Things (IoT) has started to reform and reshape our lives. The deployment of a large number of objects adhered to the internet has unlocked the vision of the smart world around us, thereby paving a road towards automation and humongous data generation and collection. This automation and continuous explosion of personal and professional information to the digital world provides a potent ground to the adversaries to perform numerous cyber-attacks, thus making security in IoT a sizeable concern. Hence, timely detection and prevention of such threats are pre-requisites to prevent serious consequences. The survey conducted provides a brief insight into the technology with prime attention towards the various attacks and anomalies and their detection based on the intelligent intrusion detection system (IDS). The comprehensive look-over presented in this paper provides an in-depth analysis and assessment of diverse machine learning and deep learning-based network intrusion detection system (NIDS). Additionally, a case study of healthcare in IoT is presented. The study depicts the architecture, security, and privacy issues and application of learning paradigms in this sector. The research assessment is finally concluded by listing the results derived from the literature. Additionally, the paper discusses numerous research challenges to allow further rectifications in the approaches to deal with unusual complications.
物联网 (IoT) 的快速发展开始改变和重塑我们的生活。大量联网物体的部署开启了我们周围智能世界的愿景,从而为自动化和大量数据的生成和收集铺平了道路。这种自动化和不断向数字世界传输个人和专业信息的行为为对手发起大量网络攻击提供了有力条件,因此物联网的安全性是一个重大问题。因此,及时检测和预防这些威胁是防止严重后果的前提。本调查提供了对该技术的简要了解,主要关注各种攻击和异常情况,以及基于智能入侵检测系统 (IDS) 的检测。本文提供了对基于机器学习和深度学习的网络入侵检测系统 (NIDS) 的全面分析和评估。此外,还介绍了物联网中医疗保健的案例研究。该研究描述了该领域的架构、安全性和隐私问题以及学习范例的应用。最后通过列出从文献中得出的结果来完成研究评估。此外,本文还讨论了许多研究挑战,以允许在处理异常复杂问题的方法上进行进一步改进。