按需频率响应和减少超宽带电磁散射的极化转换元表面的深度学习辅助设计

IF 1.8 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Journal on Multiscale and Multiphysics Computational Techniques Pub Date : 2024-07-15 DOI:10.1109/JMMCT.2024.3427629
Yuting Xiao;Ke Chen;Yijun Feng
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引用次数: 0

摘要

设计具有高效率和各种频率响应的紧凑型电磁(EM)偏振转换(PC)器件已变得至关重要,因为它们在卫星通信、成像和雷达探测等许多应用中发挥着不可替代的作用。在此,我们提出了一种将先验知识与深度学习智能算法相结合的方法,以实现按需频率响应的反射式元表面偏振转换器的快速定制。PC 元原子的设计结合了正向和反向卷积神经网络(FCNN 和 ICNN)。FCNN 可准确预测 PC 的频谱响应,从而快速生成大型数据集,而无需进行耗时的全波模拟。而 ICNN 与这些数据集相结合,有助于高效设计 PC 元原子。通过按需生成指定频段(如宽带、双频或三频响应)的各种 PC 元原子,展示了所提出的方法。作为一种应用,我们设计了一种由超宽带 PC 原子及其利用 ICNN 获得的镜像原子组成的反射元表面,并利用遗传算法对其进行了优化,从而实现了 8-37 GHz 超宽带雷达截面的实测减小。我们的方法为反射式 PC 设备提供了一种快速、智能的设计解决方案,可能在雷达、天线和通信领域大有用武之地。
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Deep-Learning-Assisted Design of Polarization Conversion Metasurface With On-Demand Frequency Response and Ultra-Broadband Electromagnetic Scattering Reduction
Designing compacted electromagnetic (EM) polarization conversion (PC) devices with high efficiency and various frequency response has become crucial due to their irreplaceable role in many applications such as satellite communications, imaging and radar detection. Here, we propose a method that combines prior-knowledge with deep-learning intelligent algorithm to enable fast customization of reflective metasurface polarization converter with on-demand frequency responses. The PC meta-atoms are designed through a combination of forward and inverse convolutional neural networks (FCNN and ICNN). Instead of time-consuming full-wave simulations, the FCNN can accurately predict the PC spectral response, enabling rapid generation of large datasets. While the ICNN, in conjunction with these datasets, facilitates efficient design of the PC meta-atoms. The proposed methodology is demonstrated through the generation of various PC meta-atoms with on-demand specified frequency bands, such as broadband, dual-band or tri-band responses. As an application, a reflective metasurface composed of the ultra-broadband PC atom and its mirror atom obtained with ICNN is designed and optimized with genetic algorithm which achieves a measured ultra-broadband radar cross-section reduction from 8–37 GHz. Our approach offers a quick and intelligent design solution for reflective PC devices, and may be potential in radar, antenna and communication fields.
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CiteScore
4.30
自引率
0.00%
发文量
27
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