基于GSM和GPS的实时远程生理信号监测与应激水平分类

A. G. Airij, R. Sudirman, U. U. Sheikh
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引用次数: 20

摘要

生理信号是重要的指标,可以帮助预测人类有害的潜在条件。医学和电子学的最新进展使得对生理信号的监测变得经济有效且无创。生活在偏远地区的人通常缺乏基本的医疗保健设施,现有的远程生理信号监测技术使用的是蓝牙和无线局域网技术,在这些地区是不可操作的。本文提出的系统利用GSM和GPS通信技术解决了这一问题,因为它们即使在偏远地区也具有广泛的可用性。该系统监测三种生理信号,即;心率,皮肤电导和皮肤温度的非侵入性测量,还可以对压力水平进行分类。最后,生理信号和应激水平数据被保存下来保存记录,并发送给医生,以便他/她远程监控患者。采用基于规则的模糊逻辑算法进行应力分类,结果表明,与已有的算法相比,模糊逻辑算法的应力分类精度最高。此外,本文还提出了一个应力水平数据集,可以在未来的研究中进一步完善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GSM and GPS Based Real-Time Remote Physiological Signals Monitoring and Stress Levels Classification
Physiological signals are significant indicators that can help anticipate harmful underlying conditions in humans. Recent advancements in medicine and electronics have allowed monitoring of physiological signals cost effectively and noninvasively. People living in remote areas are usually deprived of basic healthcare facilities and the available remote physiological signals monitoring techniques make use of Bluetooth and WLAN technologies which are inoperable in such areas. The system proposed in this paper solves this issue by making use of GSM and GPS communication techniques due to their vast availability even at remote locations. The proposed system monitors three physiological signals namely; heart rate, skin conductance and skin temperature non-invasively and also classifies stress levels. Finally, the physiological signals and stress levels data is stored for record maintenance and sent to a doctor so that he/she may monitor the patient remotely. A rule-based fuzzy logic algorithm is used for stress classification and the results shows that it achieved the highest accuracy when compared to other algorithms found in previous works. In addition to that, a stress levels dataset is also presented in this paper which can be further refined in future research.
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