A fuzzy logic approach for highly dependable medical wearable systems

Cristina C. Oliveira, J. Machado da Silva
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引用次数: 6

Abstract

A new methodology for fault detection on wearable medical devices is proposed. The main strategy relies on correctly classifying the captured physiological signals, in order to distinguish whether the actual cause is a wearer health abnormality or a system functional flaw. Data fusion techniques, namely fuzzy logic, are employed to process the captured data, like the electrocardiogram and blood pressure, to increase the trust levels with which diagnostics are made. Concerning the wearer condition, additional information is provided after classifying the set of signals into normal or abnormal (e.g. arrhythmia, chest angina, and stroke). As for the monitoring system, once an abnormal situation is detected in its operation or in the sensors, a set of tests is run to check if actually the wearer shows a degradation of his health condition or if the system is reporting erroneous values.
高可靠医疗可穿戴系统的模糊逻辑方法
提出了一种新的可穿戴医疗设备故障检测方法。主要策略依赖于正确分类捕获的生理信号,以区分实际原因是佩戴者健康异常还是系统功能缺陷。数据融合技术,即模糊逻辑,用于处理捕获的数据,如心电图和血压,以增加诊断的信任水平。关于佩戴者的状况,在将信号集分类为正常或异常(例如心律失常、胸绞痛和中风)之后提供附加信息。至于监测系统,一旦在其操作或传感器中检测到异常情况,就会运行一组测试,以检查佩戴者是否显示出健康状况的恶化,或者系统是否报告了错误的值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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