利用深度学习设计太赫兹高 Q 值超材料

Shan Yin, Haotian Zhong, Wei Huang, Wentao Zhang
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引用次数: 0

摘要

超材料为操纵电磁波和实现各种功能器件开辟了一条新途径。具有高质量因数(Q)共振响应的超材料被广泛应用于传感、探测等领域。传统的超材料设计涉及费力的模拟优化,限制了效率。而频谱突变的高 Q 值超材料更是难以按需逆向设计。本文提出了基于深度学习的太赫兹高 Q 值超材料设计新方案,包括结构参数的逆向设计和光谱响应的正向预测。在逆向设计方面,我们引入了具有大模型能力的大数据视觉注意力网络(VAN)模型,对关键敏感参数进行额外的参数调优并单独预测,可以有效减少误差,实现根据目标高Q共振响应进行高精度的结构参数逆向设计。在正向预测方面,我们开发了电磁响应变换器(ERT)模型,建立了高敏感结构参数与突变光谱之间的复杂映射关系,实现了从给定的结构参数精确预测太赫兹光谱中的高 Q 值共振。我们的 ERT 模型在计算时间上比传统的全波模拟快 4000 倍。这两种模型都表现出卓越的性能,与传统的机器学习方法相比,准确性提高了一到两个数量级。我们的工作为太赫兹高 Q 值超材料的深度学习设计提供了新途径,在太赫兹通信、传感、成像和功能器件等多个领域都有潜在应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning enabled design of terahertz high-Q metamaterials
Metamaterials open up a new way to manipulate electromagnetic waves and realize various functional devices. Metamaterials with high-quality factor (Q) resonance responses are widely employed in sensing, detection, and other applications. Traditional design of metamaterials involves laborious simulation-optimization and limits the efficiency. The high-Q metamaterials with abrupt spectral change are even harder to reverse design on-demand. In this paper, we propose novel solutions for designing terahertz high-Q metamaterials based on deep learning, including the inverse design of structural parameters and the forward prediction of spectral responses. For the inverse design, we introduce the big data Visual Attention Network (VAN) model with a large model capability, and take additional parameter tuning for the key sensitive parameters and predict them individually, which can efficiently reduce errors and achieve highly accurate inverse design of structural parameters according to the target high-Q resonance responses. For the forward prediction, we develop the Electromagnetic Response Transformer (ERT) model to establish the complex mapping relations between the highly sensitive structural parameters and the abrupt spectra, and realize precise prediction of the high-Q resonance in terahertz spectra from given structural parameters. Our ERT model can be 4000 times faster than the conventional full wave simulations in computation time. Both models exhibit outstanding performance, and the accuracy is improved one or two orders higher compared to the traditional machine learning methods. Our work provides new avenues for the deep learning enabled design of terahertz high-Q metamaterials, which holds potential applications in various fields, such as terahertz communication, sensing, imaging, and functional devices.
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