Said Abdel Mlak, Yahyaoui Aymen, Abdellatif Takoua
SERCOM Lab, University of Carthage, Carthage 1054, Tunisia.
Military Academy of Fondouk Jedid, Nabeul 8012, Tunisia.
Sensors (Basel). 2021 Feb 3;21(4):1026. doi: 10.3390/s21041026.
In critical Internet of Things (IoT) application domains, such as the Defense Industry and Healthcare, false alerts have many negative effects, such as fear, disruption of emergency services, and waste of resources. Therefore, an alert must only be sent if triggered by a correct event. Nevertheless, IoT networks are exposed to intrusions, which affects event detection accuracy. In this paper, an Anomaly Detection System (ADS) is proposed in a smart hospital IoT system for detecting events of interest about patients' health and environment and, at the same time, for network intrusions. Providing a single system for network infrastructure supervision and e-health monitoring has been shown to optimize resources and enforce the system reliability. Consequently, decisions regarding patients' care and their environments' adaptation are more accurate. The low latency is ensured, thanks to a deployment on the edge to allow for a processing close to data sources. The proposed ADS is implemented and evaluated while using Contiki Cooja simulator and the e-health event detection is based on a realistic data-set analysis. The results show a high detection accuracy for both e-health related events and IoT network intrusions.
在关键的物联网(IoT)应用领域,如国防工业和医疗保健领域,误报会产生许多负面影响,如引起恐慌、扰乱应急服务以及造成资源浪费。因此,只有在由正确事件触发时才应发送警报。然而,物联网网络容易受到入侵,这会影响事件检测的准确性。本文在智能医院物联网系统中提出了一种异常检测系统(ADS),用于检测有关患者健康和环境的感兴趣事件,同时检测网络入侵。事实证明,提供一个用于网络基础设施监督和电子健康监测的单一系统可以优化资源并增强系统可靠性。因此,关于患者护理及其环境适应性的决策会更加准确。由于在边缘进行部署,以便在靠近数据源的位置进行处理,从而确保了低延迟。所提出的ADS在使用Contiki Cooja模拟器的情况下进行了实现和评估,并且电子健康事件检测基于现实数据集分析。结果表明,对于与电子健康相关的事件和物联网网络入侵都具有很高的检测准确率。