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Free-form optimization of nanophotonic devices: from classical methods to deep learningopen access

Authors
Park, JuhoKim, SanmunNam, Daniel WontaeChung, HaejunPark, Chan Y.Jang, Min Seok
Issue Date
May-2022
Publisher
WALTER DE GRUYTER GMBH
Keywords
adjoint method; free-form optimization; machine learning; photonic device design; reinforcement learning
Citation
NANOPHOTONICS, v.11, no.9, pp.1809 - 1845
Journal Title
NANOPHOTONICS
Volume
11
Number
9
Start Page
1809
End Page
1845
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/42745
DOI
10.1515/nanoph-2021-0713
ISSN
2192-8606
Abstract
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.
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