基于物理一致性约束的太赫兹超表面生物传感器设计
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上海理工大学

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国家自然科学基金重点项目(62435010,62335012)


Design of Terahertz Metasurface Biosensors Based on Physical Consistency Neural Network
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University of Shanghai for Science and Technology

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National Natural Science Foundation of China(62435010,62335012)

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    摘要:

    提出了一种引入物理一致性约束的深度学习网络模型,用于太赫兹超表面生物传感器的建模与设计。该模型将共振频率、半高全宽和品质因子等关键共振物理参数作为网络的显式输出,并在训练过程中施加物理一致性约束,以保证模型预测结果符合共振形成的基本物理规律。数值结果表明,该模型在训练收敛性及关键物理参数预测方面具有良好的稳定性与可靠性。基于该模型完成了太赫兹超表面生物传感器的结构设计与实验验证,实验测得的光谱响应与理论预测结果一致,并实现了对同型半胱氨酸分子的痕量检测。结果表明,该方法可为太赫兹超表面生物传感器的高可靠性与可解释性设计提供有效的建模手段。

    Abstract:

    A cascaded deep learning network model with physically consistent constraints was proposed for the modeling and design of terahertz metasurface biosensors. In this model, key resonance parameters, including resonance frequency, full width at half maximum, and quality factor, were explicitly treated as network outputs, and physically consistent constraints were imposed during training to ensure that the predictions obey fundamental resonance physics. Numerical results showed that the proposed model exhibited good convergence behavior and reliable prediction accuracy for the key resonance parameters. Based on the proposed model, a terahertz metasurface biosensor was designed and experimentally validated. The measured spectral response agreed well with the theoretical prediction, and trace detection of homocysteine molecules was successfully achieved. These results demonstrate that the proposed approach provides an effective modeling method for reliable and interpretable design of terahertz metasurface biosensors.

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  • 收稿日期:2026-02-02
  • 最后修改日期:2026-03-23
  • 录用日期:2026-03-26
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