Anomaly-based Intrusion Detection System in Industrial IoT-Healthcare Environment Network

Md Maruf Rahman, Mahrima Akter Mim, Debashon Chakraborty, Zihad Hasan Joy, Nourin Nishat
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Abstract

The Internet of Things (IoT) technology facilitates automation, monitoring, and control of tangible objects and surroundings by enabling connected devices to interact and exchange data over the Internet. Developments in edge computing, blockchain, and artificial intelligence (AI) are incorporated into IoT technologies for more reliable operations. Inadequate authorization, authentication, and encryption protocols could render IoT networks insecure and open the door to illegal access and data breaches which can have terrible consequences, most notably in the healthcare industry. In this regard, to identify malicious and incursion traffic, machine learning (ML) is crucial to Internet of Things (IoT) cybersecurity. The paper proposes a framework to detect intrusion or malicious traffic in IoT-enabled different medical equipment such as medical sensors, and controllers for real-time data collection, creating communication channels and data monitoring and analysis over locally available network nodes. IoT-Flock has been utilized for both normal and malicious traffic generation in a wide dataset found by the sensors connected to IoT integrated healthcare network. The feature selection-based proposed framework has been evaluated by three distinct machine learning classifiers, KNN, RF, and DT where corresponding accuracy, sensitivity, precision, and F1-score have been measured for performance analysis. With an accuracy of 99.74%, the KNN technique performed better than the other tactics used by RF and DT regarding intrusion detection in IoT networks. The suggested framework will be helpful in developing or analyzing security solutions in IoT-integrated network systems.
工业物联网-医疗环境网络中基于异常的入侵检测系统
物联网(IoT)技术使联网设备能够通过互联网进行互动和数据交换,从而促进有形物体和周围环境的自动化、监测和控制。边缘计算、区块链和人工智能(AI)的发展已融入物联网技术,使其运行更加可靠。授权、身份验证和加密协议的不足会导致物联网网络不安全,为非法访问和数据泄露敞开大门,从而造成可怕的后果,这在医疗保健行业尤为明显。在这方面,要识别恶意和入侵流量,机器学习(ML)对物联网(IoT)网络安全至关重要。本文提出了一个框架,用于检测物联网支持的不同医疗设备(如医疗传感器和控制器)中的入侵或恶意流量,以便通过本地可用的网络节点进行实时数据收集、创建通信通道以及数据监控和分析。IoT-Flock 被用于在连接到物联网集成医疗保健网络的传感器所发现的广泛数据集中生成正常和恶意流量。基于特征选择的拟议框架已通过三种不同的机器学习分类器(KNN、RF 和 DT)进行了评估,并测量了相应的准确度、灵敏度、精确度和 F1 分数,以进行性能分析。在物联网网络入侵检测方面,KNN 技术的准确率为 99.74%,优于 RF 和 DT 所使用的其他策略。建议的框架将有助于开发或分析物联网集成网络系统的安全解决方案。
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