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基于SB-SADEA方法的用于生物医学应用的带寄生元件和缺陷接地结构的堆叠式宽带人体天线的设计与优化

Design and Optimization of Stacked Wideband On-Body Antenna with Parasitic Elements and Defected Ground Structure for Biomedical Applications Using SB-SADEA Method.

作者信息

Amador Mariana, Akinsolu Mobayode O, Hua Qiang, Cardoso João, Albuquerque Daniel, Pinho Pedro

机构信息

Instituto de Telecomunicações, Departamento de Eletrónica, Telecomunicações e Informática, Universidade de Aveiro, 3810-193 Aveiro, Portugal.

Faculty of Arts, Computing and Engineering, Wrexham University, Wales LL11 2AW, UK.

出版信息

Bioengineering (Basel). 2025 Jan 31;12(2):138. doi: 10.3390/bioengineering12020138.

Abstract

The ability to measure vital signs using electromagnetic waves has been extensively investigated as a less intrusive method capable of assessing different biosignal sources while using a single device. On-body antennas, when directly coupled to the human body, offer a comfortable and effective alternative for daily monitoring. Nonetheless, on-body antennas are challenging to design primarily due to the high dielectric constant of body tissues. While the simulation process may often include a body model, a unique model cannot account for inter-individual variability, leading to discrepancies in measured antenna parameters. A potential solution is to increase the antenna's bandwidth, guaranteeing the antenna's impedance matching and robustness for all users. This work describes a new on-body microstrip antenna having a stacked structure with parasitic elements, designed and optimized using artificial intelligence (AI). By using an AI-driven design approach, a self-adaptive Bayesian neural network surrogate-model-assisted differential evolution for antenna optimization (SB-SADEA) method to be specific, and a stacked structure having parasitic elements and a defected ground structure with 27 tuneable design parameters, the simulated impedance bandwidth of the on-body antenna was successfully enhanced from 150 MHz to 1.3 GHz, while employing a single and simplified body model in the simulation process. Furthermore, the impact of inter-individual variability on the measured S-parameters was analyzed. The measured results relative to ten subjects revealed that for certain subjects, the SB-SADEA-optimized antenna's bandwidth reached 1.6 GHz.

摘要

利用电磁波测量生命体征的能力已作为一种侵入性较小的方法被广泛研究,该方法能够在使用单一设备的同时评估不同的生物信号源。当与人体直接耦合时,体表天线为日常监测提供了一种舒适且有效的替代方案。然而,体表天线的设计具有挑战性,主要原因是人体组织的介电常数较高。虽然模拟过程通常可能包括人体模型,但单一模型无法考虑个体间的差异,导致测量的天线参数存在差异。一种潜在的解决方案是增加天线的带宽,确保天线对所有用户的阻抗匹配和鲁棒性。这项工作描述了一种新型的体表微带天线,它具有带寄生元件的堆叠结构,采用人工智能(AI)进行设计和优化。具体而言,通过使用一种人工智能驱动的设计方法,即用于天线优化的自适应贝叶斯神经网络代理模型辅助差分进化(SB-SADEA)方法,以及具有寄生元件和带27个可调设计参数的缺陷接地结构的堆叠结构,在模拟过程中使用单一且简化的人体模型时,体表天线的模拟阻抗带宽成功地从150 MHz提高到了1.3 GHz。此外,还分析了个体间差异对测量的S参数的影响。相对于十名受试者的测量结果表明,对于某些受试者,经SB-SADEA优化的天线带宽达到了1.6 GHz。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c2fc/11851993/2cbb6914d770/bioengineering-12-00138-g001.jpg

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