基于机器学习的传感器数据修改入侵检测方法

A. Verner, Dany Butvinik
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引用次数: 12

摘要

无线体域网络(wban)广泛用于收集和监测患者的重要医疗参数,如呼吸、心脏功能和肌肉活动。无线宽带网络的一个严重缺陷是容易受到各种安全问题的攻击,其中之一就是传感器的物理篡改。损坏或受损的传感器传输无效数据可能导致错误的诊断、不当的治疗和不良的结果。在本文中,我们分析了血糖水平传感器,并提出了一种机器学习算法,该算法可以检测此类传感器有意和无意的数据修改入侵。该算法使用Otsu的阈值法和其他统计方法来创建特征,以估计传感器数据的边界、平均值、偏差和模式。然后使用具有线性核和不同误分类参数的支持向量机(SVM)模型对特征向量进行分类。在一个大型真实患者数据集上的实验表明,该算法的准确率达到100%,召回率达到99.22%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Approach to Detecting Sensor Data Modification Intrusions in WBANs
Wireless Body Area Networks (WBANs) are widely used for collecting and monitoring patients' vital healthcare parameters, such as breathing, heart function and muscle activity. A serious flaw of WBANs is their vulnerability to various security issues, one of which is the physical tampering of the sensors. Transmission of invalid data by a damaged or compromised sensor may lead to incorrect diagnosis, improper treatment and undesirable results. In this paper, we analyze blood glucose-level sensors and propose a machine learning algorithm that detects intentional and inadvertent data modification intrusions for this type of sensors. The proposed algorithm uses Otsu’s Thresholding Method and other statistical measures to create features that estimate boundaries, averages, deviations and patterns of sensor data. Feature vectors are then classified by a Support Vector Machine (SVM) model with a linear kernel and varying misclassification parameter. Experiments on a large real-patient dataset show that the proposed algorithm achieves 100% precision and 99.22% recall.
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