医疗无线传感器网络中故障测量的检测与隔离

Osman Salem, Yaning Liu, A. Mehaoua
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引用次数: 6

摘要

在本文中,我们提出了一个新的框架,用于在线检测和隔离由医疗无线传感器报告的故障测量。在我们提出的框架中,每个传感器都使用非季节性的Holt-Winter算法来检测与其测量相关的时间序列中的任何偏差,并且只将检测到的异常值传输到便携式采集设备(智能手机),以减少数据传输所消耗的能量。由于生理参数是高度相关的,因此错误的测量结果通常与其他传感器的值不相关。因此,收集设备使用这种相关性及其对接收到的偏差数量的全局视图来决定是否对紧急情况发出警报或丢弃报告的错误测量。我们的主要目标是减少由错误测量触发的误报。将该方法应用于真实的生理数据集,证明了该方法具有较好的检测精度和较低的虚警率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and isolation of faulty measurements in medical Wireless Sensor Networks
In this paper, we propose a new framework for online detection and isolation of faulty measurements reported by medical wireless sensors. In our proposed framework, each sensor applies the non-seasonal Holt-Winter algorithm to detect any deviation in the time series associated with its measurements, and it will only transmit the detected abnormal values to the portable collection device (smart phone), in order to reduce the consumed energy of data transmission. As the physiological parameters are heavily correlated, the faulty measurements are usually uncorrelated with values of other sensors. Therefore, the collection device uses this correlation and its global view on the number of received deviations, to decide whether to raise an alarm for an emergency situation or to discard reported faulty measurements. Our main objective is to reduce false alarms triggered by faulty measurements.We apply our proposed approach on real physiological data set, and we prove its ability to achieve good detection accuracy with a low false alarm rate.
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