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Detection of Faulty Measurements in WBANs using Gaussian Mixture Model and Ant Colony

机译:使用高斯混合模型和蚁群算法检测WBAN中的错误测量

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Wireless sensor networks are subject to different types of faults and interferences after their deployment. Abnormal values reported by sensors should be separated from faulty or injected measurements to ensure reliable monitoring operation. The aim of this paper is to propose a lightweight approach for the detection and suppression of faulty measurements in medical wireless sensor networks. The proposed approach is based on the combination of statistical model and machine learning algorithm. The authors begin by collecting physiological data and then they cluster the data collected during the first few minutes using the Gaussian mixture decomposition. They use the resulted labeled data as the input for the A nt Colony algorithm to derive classification rules in the central base station. Afterward, the derived rules are transmitted and installed in each associated sensor to detect abnormal values in distributed manner, and notify anomalies to the base station. Finally, the authors exploit the spatial and temporal correlations between monitored attributes to differentiate between faulty sensor readings and clinical emergency. They evaluate their approach with real and synthetic patient datasets. The experimental results demonstrate that their proposed approach achieves a high rate of detection accuracy for clinical emergency with reduced false alarm rate when compared to robust Mahalanobis distance.
机译:无线传感器网络在部署后会遭受不同类型的故障和干扰。传感器报告的异常值应与故障或注入的测量值分开,以确保可靠的监控操作。本文的目的是提出一种轻量级的方法,用于检测和抑制医疗无线传感器网络中的错误测量。该方法基于统计模型和机器学习算法的结合。作者从收集生理数据开始,然后使用高斯混合分解对最初几分钟内收集的数据进行聚类。他们使用结果标记的数据作为A nt Colony算法的输入,以导出中央基站中的分类规则。之后,将导出的规则发送并安装在每个关联的传感器中,以分布式方式检测异常值,并将异常通知基站。最后,作者利用监测属性之间的时空相关性来区分错误的传感器读数和临床紧急情况。他们使用真实和综合的患者数据集评估他们的方法。实验结果表明,与健壮的马哈拉诺比斯距离相比,他们提出的方法可在临床紧急情况下实现较高的检测准确率,并降低误报率。

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