Department of Computer Science & Applications, Maharshi Dayanand University, Rohtak, Haryana, India.
Department of Information Technology, Lord Buddha Education Foundation, Kathmandu, Nepal.
Comput Intell Neurosci. 2022 May 20;2022:1668676. doi: 10.1155/2022/1668676. eCollection 2022.
Internet of Things (IoT) is the fastest growing technology that has applications in various domains such as healthcare, transportation. It interconnects trillions of smart devices through the Internet. A secure network is the basic necessity of the Internet of Things. Due to the increasing rate of interconnected and remotely accessible smart devices, more and more cybersecurity issues are being witnessed among cyber-physical systems. A perfect intrusion detection system (IDS) can probably identify various cybersecurity issues and their sources. In this article, using various telemetry datasets of different Internet of Things scenarios, we exhibit that external users can access the IoT devices and infer the victim user's activity by sniffing the network traffic. Further, the article presents the performance of various bagging and boosting ensemble decision tree techniques of machine learning in the design of an efficient IDS. Most of the previous IDSs just focused on good accuracy and ignored the execution speed that must be improved to optimize the performance of an ID model. Most of the earlier pieces of research focused on binary classification. This study attempts to evaluate the performance of various ensemble machine learning multiclass classification algorithms by deploying on openly available "TON-IoT" datasets of IoT and Industrial IoT (IIoT) sensors.
物联网(IoT)是发展最快的技术,它在医疗保健、交通等各个领域都有应用。它通过互联网将数万亿的智能设备互联起来。安全的网络是物联网的基本需求。由于互联和远程访问的智能设备的数量不断增加,网络物理系统中越来越多的网络安全问题正在被见证。一个完美的入侵检测系统(IDS)可能能够识别各种网络安全问题及其来源。在本文中,我们使用了各种物联网场景的遥测数据集,展示了外部用户可以访问物联网设备,并通过嗅探网络流量来推断受害者用户的活动。此外,本文还展示了机器学习中各种袋装和提升集成决策树技术在设计高效 IDS 中的性能。以前的大多数 IDS 只关注于良好的准确性,而忽略了必须提高的执行速度,以优化 ID 模型的性能。以前的大多数研究都集中在二进制分类上。本研究试图通过部署物联网和工业物联网(IIoT)传感器的公开可用的“TON-IoT”数据集,评估各种集成机器学习多类分类算法的性能。