Nandikotkur Achyuth, Traore Issa, Mamun Mohammad
Deptartment of Electrical and Computer Engineering, University of Victoria, Victoria, BC V8P 5C2, Canada.
National Research Council Canada, Government of Canada, Ottawa, ON K1A 0R6, Canada.
Sensors (Basel). 2023 Jul 28;23(15):6752. doi: 10.3390/s23156752.
With the ever-growing reliance on IoT-enabled sensors to age in place, a need arises to protect them from malicious actors and detect malfunctions. In an IoT smart home, it is reasonable to hypothesize that sensors near one another can exhibit linear or nonlinear correlations. If substantiated, this property can be beneficial for constructing relationship trends between the sensors and, consequently, detecting attacks or other anomalies by measuring the deviation of their readings against these trends. In this work, we confirm the presence of correlations between co-located sensors by statistically analyzing two public smart-home datasets and a dataset we collected from our experimental setup. Additionally, we leverage the sliding window approach and supervised machine learning to develop a contextual-anomaly-detection model. This model reaches a true positive rate of 89.47% and a false positive rate of 0%. Our work not only substantiates the correlations but also introduces a novel anomaly-detection technique to enhance security in IoT smart homes.
随着对用于原地养老的物联网传感器的依赖日益增加,需要保护它们免受恶意行为者的攻击并检测故障。在物联网智能家居中,可以合理假设彼此靠近的传感器会呈现线性或非线性相关性。如果得到证实,此属性将有助于构建传感器之间的关系趋势,从而通过测量其读数相对于这些趋势的偏差来检测攻击或其他异常情况。在这项工作中,我们通过对两个公共智能家居数据集和我们从实验装置中收集的数据集进行统计分析,证实了共置传感器之间存在相关性。此外,我们利用滑动窗口方法和监督机器学习来开发一种上下文异常检测模型。该模型的真阳性率达到89.47%,假阳性率为0%。我们的工作不仅证实了相关性,还引入了一种新颖的异常检测技术,以增强物联网智能家居的安全性。