设计基于石墨烯-金元表面的编码和可调谐表面等离子体共振传感器,用于太赫兹区葡萄糖检测

IF 3.3 4区 物理与天体物理 Q2 CHEMISTRY, PHYSICAL Plasmonics Pub Date : 2024-07-31 DOI:10.1007/s11468-024-02452-9
N. K. Anushkannan, Jacob Wekalao, Shobhit K. Patel, Fahad Ahmed Al-Zahrani
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引用次数: 0

摘要

本研究介绍了一种利用石墨烯元表面的高灵敏度太赫兹折射率传感器的设计、优化和评估,该传感器用于尿液样本中的葡萄糖检测。拟议的传感器采用了由石墨烯、金和银组成的圆形、方形和三角形谐振器结构,以增强等离子特性和传感性能。利用 COMSOL 多物理场仿真进行了全面的参数分析和优化。传感器表现出卓越的性能特征,包括 1000 GHzRIU-1 的高灵敏度和 100.2 至 100.5 的品质因数。为了进一步提高精度和缩短仿真时间,我们集成了一个 XGBoost 回归模型,用于预测传感器在不同参数下的行为。该模型的 R2 值始终保持在 1 或接近 1,验证了传感器设计的稳健性。与现有文献的对比分析表明,所提出的传感器具有更高的灵敏度、优越性和品质因数。这项工作有助于推动无创葡萄糖监测技术的发展,并展示了机器学习集成在优化生物医学应用中基于超材料的传感器方面的潜力。
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Design of Encoded and Tunable Graphene-Gold Metasurface-Based Surface Plasmon Resonance Sensors for Glucose Detection in the Terahertz Regime

This study presents the design, optimization, and evaluation of a highly sensitive terahertz refractive index sensor utilizing graphene metasurfaces for glucose detection in urine samples. The proposed sensor incorporates circular, square, and triangular resonator structures composed of graphene, gold, and silver to enhance plasmonic properties and sensing performance. Comprehensive parametric analysis and optimization were conducted using COMSOL Multiphysics simulations. The sensor demonstrates excellent performance characteristics, including a high sensitivity of 1000 GHzRIU−1 and quality factors ranging from 100.2 to 100.5. To further improve accuracy and reduce simulation time, an XGBoost Regressor model was integrated for predicting sensor behaviour across various parameters. The model achieved R2 scores consistently at or near 1, validating the robustness of the sensor design. Comparative analysis with existing literature highlights the superior sensitivity, figure of merit, and quality factor of the proposed sensor. This work contributes to advancing non-invasive glucose monitoring technologies and demonstrates the potential of machine learning integration in optimizing metamaterial-based sensors for biomedical applications.

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来源期刊
Plasmonics
Plasmonics 工程技术-材料科学:综合
CiteScore
5.90
自引率
6.70%
发文量
164
审稿时长
2.1 months
期刊介绍: Plasmonics is an international forum for the publication of peer-reviewed leading-edge original articles that both advance and report our knowledge base and practice of the interactions of free-metal electrons, Plasmons. Topics covered include notable advances in the theory, Physics, and applications of surface plasmons in metals, to the rapidly emerging areas of nanotechnology, biophotonics, sensing, biochemistry and medicine. Topics, including the theory, synthesis and optical properties of noble metal nanostructures, patterned surfaces or materials, continuous or grated surfaces, devices, or wires for their multifarious applications are particularly welcome. Typical applications might include but are not limited to, surface enhanced spectroscopic properties, such as Raman scattering or fluorescence, as well developments in techniques such as surface plasmon resonance and near-field scanning optical microscopy.
期刊最新文献
Comparative Analysis of Two Different MIM Configurations of a Plasmonic Nanoantenna On the Transmission Line Analogy for Modeling Plasmonic Nanowire Circuits Terahertz-Multiplexed Metallic Metasurfaces for Enhanced Trace Sample Absorption Plasmonic Characteristics of LiF Filled Slab Waveguide in Isotropic Plasma Environment Synthesis, Characterization, and Modeling of Reduced Graphene Oxide Supported Adsorbent for Sorption of Pb(II) and Cr(VI) Ions from Binary Mixture
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