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Sensor fault and patient anomaly detection and classification in medical wireless sensor networks

机译:医疗无线传感器网络中的传感器故障和患者异常检测与分类

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Wireless Sensor Networks are vulnerable to a plethora of different fault types and external attacks after their deployment. We focus on sensor networks used in healthcare applications for vital sign collection from remotely monitored patients. These types of personal area networks must be robust and resilient to sensor failures as their capabilities encompass highly critical systems. Our objective is to propose an anomaly detection algorithm for medical wireless sensor networks. Our proposed approach firstly classifies instances of sensed patient attributes as normal and abnormal. Once we detect an abnormal instance, we use regression prediction to discern between a faulty sensor reading and a patient entering into a critical state. Our experimental results on real patient datasets show that our proposed approach is able to quickly detect patient anomalies and sensor faults with high detection accuracy while maintaining a low false alarm ratio.
机译:部署后,无线传感器网络容易受到多种不同故障类型和外部攻击的攻击。我们专注于医疗保健应用中的传感器网络,用于从远程监控的患者身上收集生命体征。这些类型的个人区域网络必须具有强大的功能并能够应对传感器故障,因为它们的功能涵盖了非常关键的系统。我们的目标是提出一种用于医疗无线传感器网络的异常检测算法。我们提出的方法首先将感测到的患者属性实例分类为正常和异常。一旦我们检测到异常情况,就可以使用回归预测来区分传感器读数是否错误和患者进入临界状态。我们在真实患者数据集上的实验结果表明,我们提出的方法能够以较高的检测精度快速检测患者异常和传感器故障,同时保持较低的误报率。

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