El-Sofany Hosam, El-Seoud Samir A, Karam Omar H, Bouallegue Belgacem
College of Computer Science, King Khalid University, Abha, Kingdom of Saudi Arabia.
Faculty of Informatics and Computer Science, British University in Egypt-BUE, Cairo, Egypt.
Sci Rep. 2024 May 27;14(1):12077. doi: 10.1038/s41598-024-62861-y.
The term "Internet of Things" (IoT) refers to a system of networked computing devices that may work and communicate with one another without direct human intervention. It is one of the most exciting areas of computing nowadays, with its applications in multiple sectors like cities, homes, wearable equipment, critical infrastructure, hospitals, and transportation. The security issues surrounding IoT devices increase as they expand. To address these issues, this study presents a novel model for enhancing the security of IoT systems using machine learning (ML) classifiers. The proposed approach analyzes recent technologies, security, intelligent solutions, and vulnerabilities in ML IoT-based intelligent systems as an essential technology to improve IoT security. The study illustrates the benefits and limitations of applying ML in an IoT environment and provides a security model based on ML that manages autonomously the rising number of security issues related to the IoT domain. The paper proposes an ML-based security model that autonomously handles the growing number of security issues associated with the IoT domain. This research made a significant contribution by developing a cyberattack detection solution for IoT devices using ML. The study used seven ML algorithms to identify the most accurate classifiers for their AI-based reaction agent's implementation phase, which can identify attack activities and patterns in networks connected to the IoT. The study used seven ML algorithms to identify the most accurate classifiers for their AI-based reaction agent's implementation phase, which can identify attack activities and patterns in networks connected to the IoT. Compared to previous research, the proposed approach achieved a 99.9% accuracy, a 99.8% detection average, a 99.9 F1 score, and a perfect AUC score of 1. The study highlights that the proposed approach outperforms earlier machine learning-based models in terms of both execution speed and accuracy. The study illustrates that the suggested approach outperforms previous machine learning-based models in both execution time and accuracy.
“物联网”(IoT)一词指的是一个联网计算设备系统,这些设备可以在无需人工直接干预的情况下相互协作和通信。它是当今最令人兴奋的计算领域之一,其应用涵盖多个领域,如城市、家庭、可穿戴设备、关键基础设施、医院和交通。随着物联网设备的不断扩展,围绕它们的安全问题也日益增加。为了解决这些问题,本研究提出了一种使用机器学习(ML)分类器来增强物联网系统安全性的新型模型。所提出的方法分析了基于ML物联网的智能系统中的最新技术、安全性、智能解决方案和漏洞,将其作为提高物联网安全性的一项关键技术。该研究阐述了在物联网环境中应用ML的优点和局限性,并提供了一个基于ML的安全模型,该模型可自主管理与物联网领域相关的日益增多的安全问题。本文提出了一种基于ML的安全模型,该模型可自主处理与物联网领域相关的越来越多的安全问题。这项研究通过开发一种使用ML的物联网设备网络攻击检测解决方案做出了重大贡献。该研究使用了七种ML算法来为其基于AI的反应代理的实施阶段确定最准确的分类器,该阶段可以识别与物联网相连的网络中的攻击活动和模式。该研究使用了七种ML算法来为其基于AI的反应代理的实施阶段确定最准确的分类器,该阶段可以识别与物联网相连的网络中的攻击活动和模式。与先前的研究相比,所提出的方法实现了99.9%的准确率、99.8%的平均检测率、99.9的F1分数以及完美的AUC分数1。该研究强调,所提出的方法在执行速度和准确性方面均优于早期基于机器学习的模型。该研究表明,所建议的方法在执行时间和准确性方面均优于先前基于机器学习的模型。