Chen Nengfu, He Chong, Zhu Weiren
Department of Electronic Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
Nanomaterials (Basel). 2023 Jan 12;13(2):329. doi: 10.3390/nano13020329.
Graphene, as a widely used nanomaterial, has shown great flexibility in designing optically transparent microwave metasurfaces with broadband absorption. However, the design of graphene-based microwave metasurfaces relies on cumbersome parameter sweeping as well as the expertise of researchers. In this paper, we propose a machine-learning network which enables the forward prediction of reflection spectra and inverse design of versatile microwave absorbers. Techniques such as the normalization of input and transposed convolution layers are introduced in the machine-learning network to make the model lightweight and efficient. Particularly, the tunable conductivity of graphene enables a new degree in the intelligent design of metasurfaces. The inverse design system based on the optimization method is proposed for the versatile design of microwave absorbers. Representative cases are demonstrated, showing very promising performances on satisfying various absorption requirements. The proposed machine-learning network has significant potential for the intelligent design of graphene-based metasurfaces for various microwave applications.
石墨烯作为一种广泛应用的纳米材料,在设计具有宽带吸收的光学透明微波超表面方面展现出了极大的灵活性。然而,基于石墨烯的微波超表面设计依赖于繁琐的参数扫描以及研究人员的专业知识。在本文中,我们提出了一种机器学习网络,该网络能够实现反射光谱的正向预测以及通用微波吸收体的逆向设计。在机器学习网络中引入了诸如输入归一化和转置卷积层等技术,以使模型轻量化且高效。特别地,石墨烯的可调电导率为超表面的智能设计带来了新的维度。针对微波吸收体的通用设计,提出了基于优化方法的逆向设计系统。展示了代表性案例,在满足各种吸收要求方面表现出非常有前景的性能。所提出的机器学习网络在基于石墨烯的超表面用于各种微波应用的智能设计方面具有巨大潜力。