基于时域有限积分定理的人体生命体征动态电磁检测模型

IF 3 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Xinyu Li;Jingyuan Zhang;Zixuan Cai;Xiong Wei Wu;Qiaocong Peng;Qian Ma;Jian Wei You;Tie Jun Cui
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引用次数: 0

摘要

使用电磁波的非接触式人体生命体征传感在过去几年中取得了重大进展,并实际应用于智能家居和医疗保健等各个领域。然而,该技术的进一步发展受到数据量大、观测周期长、数据变异性等因素的阻碍。针对这一挑战,提出了一种由定制时变电磁材料组成的动态人体电磁模型,以模拟人体心肺运动的周期性特征,并获得运动引起的生理信号。随后,采用时域有限积分技术(TDFIT)解决了电磁问题,从而可以准确分析与人体心肺运动相关的电磁散射特性。为了验证所提出的人体EM模型的有效性,我们对模拟的人体生理信号进行了呼吸和心跳估计,误差分别小于4%和8%。此外,还进行了测量实验,以收集实际的人体生命体征信号进行比较。测量结果和模拟结果之间的良好一致性表明,所提出的人体EM模型能够准确地模拟周期性心肺运动,从而为生命体征传感算法的初步验证提供模拟生理测量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Electromagnetic Model to Detect Human Vital Signs Based on Time-Domain Finite Integration Theorem
Contactless human vital-sign sensing using electromagnetic (EM) waves has made significant progress over the past few years and been practically applicable to a variety of fields such as smart home and healthcare. However, the further development of this technology is hindered by factors such as large volumes of data, long observation periods, and data variability. To deal with this challenge, a dynamic human EM model composed of customized time-varying EM materials is proposed to simulate the periodic characteristics of human cardiopulmonary motions and obtain physiological signals caused by the movements. The EM problem is subsequently addressed by employing the Time-Domain Finite Integration Technique (TDFIT), so that the EM scattering properties associated with human cardiopulmonary movements can be accurately analyzed. To validate the effectiveness of the proposed human EM model, we process the simulated human physiological signals for respiration and heartbeat rate estimation, with the error less than 4% and 8%, respectively. Furthermore, measured experiments are conducted to collected actual human vital-sign signals for comparison. Good agreement between the measured and simulated results demonstrates that the proposed human EM model is capable of accurately simulating the periodic cardiopulmonary motions and thus providing simulated physiological measurements for preliminary validation of vital sign sensing algorithms.
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来源期刊
CiteScore
5.80
自引率
9.40%
发文量
58
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