• Study On Optical Communications
  • Vol. 46, Issue 3, 33 (2020)
LI Shi-yu1,*, CHEN Shu-wen1, JIANG Bin1, ZHANG Zhan-tian1..., YANG Yu-gang1, HE You-Chen1, ZHU Hua-tao1, ZHANG Qian1 and YU Man2|Show fewer author(s)
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • show less
    DOI: 10.13756/j.gtxyj.2020.03.007 Cite this Article
    LI Shi-yu, CHEN Shu-wen, JIANG Bin, ZHANG Zhan-tian, YANG Yu-gang, HE You-Chen, ZHU Hua-tao, ZHANG Qian, YU Man. Research Progress in Neural Network Inverse Design of Nanophotonic Device[J]. Study On Optical Communications, 2020, 46(3): 33 Copy Citation Text show less

    Abstract

    The interaction between light and nanostructures has always been one of the important topic in nanophotonics. The nanostructure of the core components play an important role in the function and performance of photonic devices. There are two approaches in the design of nanophotonic devices. One is based on physical principles and intuitive, while the other employs the idea of inverse design to obtain the optimal structure according to the required optical response. In recent years, inverse design has made great progress in nanophotonic devices. In particular, the technology of deep learning was recently introduced, promising for the design of high-performance nanophotonic devices. This article focuses on inverse design method of the nanophotonic devices. The background, key progress and typical applications of this emerging research direction are analyzed and summarized, and the challenges and prospect of inverse design are also presented.
    LI Shi-yu, CHEN Shu-wen, JIANG Bin, ZHANG Zhan-tian, YANG Yu-gang, HE You-Chen, ZHU Hua-tao, ZHANG Qian, YU Man. Research Progress in Neural Network Inverse Design of Nanophotonic Device[J]. Study On Optical Communications, 2020, 46(3): 33
    Download Citation