Park Juho, Kim Sanmun, Nam Daniel Wontae, Chung Haejun, Park Chan Y, Jang Min Seok
School of Electrical Engineering, Korea Advanced Institute of Science and Technology, Daejeon 34141, Korea.
KC Machine Learning Lab, Seoul 06181, Korea.
Nanophotonics. 2022 Jan 12;11(9):1809-1845. doi: 10.1515/nanoph-2021-0713. eCollection 2022 Apr.
Nanophotonic devices have enabled microscopic control of light with an unprecedented spatial resolution by employing subwavelength optical elements that can strongly interact with incident waves. However, to date, most nanophotonic devices have been designed based on fixed-shape optical elements, and a large portion of their design potential has remained unexplored. It is only recently that free-form design schemes have been spotlighted in nanophotonics, offering routes to make a break from conventional design constraints and utilize the full design potential. In this review, we systematically overview the nascent yet rapidly growing field of free-form nanophotonic device design. We attempt to define the term "free-form" in the context of photonic device design, and survey different strategies for free-form optimization of nanophotonic devices spanning from classical methods, adjoint-based methods, to contemporary machine-learning-based approaches.
纳米光子器件通过采用能够与入射波强烈相互作用的亚波长光学元件,实现了前所未有的空间分辨率的光的微观控制。然而,迄今为止,大多数纳米光子器件都是基于固定形状的光学元件设计的,其很大一部分设计潜力尚未得到探索。直到最近,自由形式设计方案才在纳米光子学中受到关注,为突破传统设计限制和充分利用设计潜力提供了途径。在这篇综述中,我们系统地概述了自由形式纳米光子器件设计这个新兴但发展迅速的领域。我们试图在光子器件设计的背景下定义“自由形式”一词,并探讨纳米光子器件自由形式优化的不同策略,涵盖从经典方法、基于伴随的方法到当代基于机器学习的方法。