Ma Wei, Xu Yihao, Xiong Bo, Deng Lin, Peng Ru-Wen, Wang Mu, Liu Yongmin
State Key Laboratory of Modern Optical Instrumentation, College of Information Science and Electronic Engineering, Zhejiang University, Hangzhou, 310027, China.
Department of Mechanical and Industrial Engineering, Northeastern University, Boston, MA, 02115, USA.
Adv Mater. 2022 Apr;34(16):e2110022. doi: 10.1002/adma.202110022. Epub 2022 Mar 9.
As 2D metamaterials, metasurfaces provide an unprecedented means to manipulate light with the ability to multiplex different functionalities in a single planar device. Currently, most pursuits of multifunctional metasurfaces resort to empirically accommodating more functionalities at the cost of increasing structural complexity, with little effort to investigate the intrinsic restrictions of given meta-atoms and thus the ultimate limits in the design. In this work, it is proposed to embed machine-learning models in both gradient-based and nongradient optimization loops for the automatic implementation of multifunctional metasurfaces. Fundamentally different from the traditional two-step approach that separates phase retrieval and meta-atom structural design, the proposed end-to-end framework facilitates full exploitation of the prescribed design space and pushes the multifunctional design capacity to its physical limit. With a single-layer structure that can be readily fabricated, metasurface focusing lenses and holograms are experimentally demonstrated in the near-infrared region. They show up to eight controllable responses subjected to different combinations of working frequencies and linear polarization states, which are unachievable by the conventional physics-guided approaches. These results manifest the superior capability of the data-driven scheme for photonic design, and will accelerate the development of complex devices and systems for optical display, communication, and computing.
作为二维超材料,超表面提供了一种前所未有的光操控手段,能够在单个平面器件中实现多种功能的复用。目前,大多数对多功能超表面的追求都依赖于以增加结构复杂性为代价,凭经验容纳更多功能,而很少努力研究给定元原子的内在限制以及设计中的最终极限。在这项工作中,提出将机器学习模型嵌入基于梯度和非梯度的优化循环中,以自动实现多功能超表面。与传统的将相位检索和元原子结构设计分开的两步法有根本不同,所提出的端到端框架有助于充分利用规定的设计空间,并将多功能设计能力推向其物理极限。通过一种易于制造的单层结构,在近红外区域通过实验展示了超表面聚焦透镜和全息图。它们在不同的工作频率和线性偏振态组合下显示出多达八种可控响应,这是传统物理引导方法无法实现的。这些结果表明了数据驱动方案在光子设计方面的卓越能力,并将加速用于光学显示、通信和计算的复杂器件和系统的发展。