Diffusion probabilistic model based accurate and high-degree-of-freedom metasurface inverse design

被引:33
作者
Zhang, Zezhou [1 ,2 ]
Yang, Chuanchuan [3 ]
Qin, Yifeng [2 ]
Feng, Hao [1 ,2 ]
Feng, Jiqiang [4 ]
Li, Hongbin [3 ]
机构
[1] Peking Univ, Peking Univ Shenzhen Grad Sch, Shenzhen 518055, Peoples R China
[2] Peng Cheng Lab, Shenzhen 518055, Peoples R China
[3] Peking Univ, Sch Elect, State Key Lab Adv Opt Commun Syst & Networks, Beijing 100871, Peoples R China
[4] Shenzhen Univ, Sch Math Sci, Shenzhen 518060, Peoples R China
关键词
deep learning; metasurfaces; inverse design; diffusion probabilistic model; BROAD-BAND;
D O I
10.1515/nanoph-2023-0292
中图分类号
TB3 [工程材料学];
学科分类号
0805 ; 080502 ;
摘要
Conventional meta-atom designs rely heavily on researchers' prior knowledge and trial-and-error searches using full-wave simulations, resulting in time-consuming and inefficient processes. Inverse design methods based on optimization algorithms, such as evolutionary algorithms, and topological optimizations, have been introduced to design metamaterials. However, none of these algorithms are general enough to fulfill multi-objective tasks. Recently, deep learning methods represented by generative adversarial networks (GANs) have been applied to inverse design of metamaterials, which can directly generate high-degree-of-freedom meta-atoms based on S-parameters requirements. However, the adversarial training process of GANs makes the network unstable and results in high modeling costs. This paper proposes a novel metamaterial inverse design method based on the diffusion probability theory. By learning the Markov process that transforms the original structure into a Gaussian distribution, the proposed method can gradually remove the noise starting from the Gaussian distribution and generate new high-degree-of-freedom meta-atoms that meet S-parameters conditions, which avoids the model instability introduced by the adversarial training process of GANs and ensures more accurate and high-quality generation results. Experiments have proven that our method is superior to representative methods of GANs in terms of model convergence speed, generation accuracy, and quality.
引用
收藏
页码:3871 / 3881
页数:11
相关论文
共 45 条
[1]   Multifunctional Metasurface Design with a Generative Adversarial Network [J].
An, Sensong ;
Zheng, Bowen ;
Tang, Hong ;
Shalaginov, Mikhail Y. ;
Zhou, Li ;
Li, Hang ;
Kang, Myungkoo ;
Richardson, Kathleen A. ;
Gu, Tian ;
Hu, Juejun ;
Fowler, Clayton ;
Zhang, Hualiang .
ADVANCED OPTICAL MATERIALS, 2021, 9 (05)
[2]   Deep learning modeling approach for metasurfaces with high degrees of freedom [J].
An, Sensong ;
Zheng, Bowen ;
Shalaginov, Mikhail Y. ;
Tang, Hong ;
Li, Hang ;
Zhou, Li ;
Ding, Jun ;
Agarwal, Anuradha Murthy ;
Rivero-Baleine, Clara ;
Kang, Myungkoo ;
Richardson, Kathleen A. ;
Gu, Tian ;
Hu, Juejun ;
Fowler, Clayton ;
Zhang, Hualiang .
OPTICS EXPRESS, 2020, 28 (21) :31932-31942
[3]   A Deep Learning Approach for Objective-Driven All-Dielectric Metasurface Design [J].
An, Sensong ;
Fowler, Clayton ;
Zheng, Bowen ;
Shalaginov, Mikhail Y. ;
Tang, Hong ;
Li, Hang ;
Zhou, Li ;
Ding, Jun ;
Agarwal, Anuradha Murthy ;
Rivero-Baleine, Clara ;
Richardson, Kathleen A. ;
Gu, Tian ;
Hu, Juejun ;
Zhang, Hualiang .
ACS PHOTONICS, 2019, 6 (12) :3196-3207
[4]   Broadband achromatic metalens design based on deep neural networks [J].
An, Xipeng ;
Cao, Yue ;
Wei, Yunxuan ;
Zhou, Zhihao ;
Hu, Tie ;
Feng, Xing ;
He, Guangqiang ;
Zhao, Ming ;
Yang, Zhenyu .
OPTICS LETTERS, 2021, 46 (16) :3881-3884
[5]  
Arjovsky M, 2017, PR MACH LEARN RES, V70
[6]   Data-driven concurrent nanostructure optimization based on conditional generative adversarial networks [J].
Baucour, Arthur ;
Kim, Myungjoon ;
Shin, Jonghwa .
NANOPHOTONICS, 2022, 11 (12) :2865-2873
[7]  
Chen SQ, 2020, ADV MATER, V32, DOI [10.1002/adma.202070022, 10.1002/adma.201805912]
[8]   SLMGAN: Single-layer metasurface design with symmetrical free-form patterns using generative adversarial networks [J].
Dai, Manna ;
Jiang, Yang ;
Yang, Feng ;
Xu, Xinxing ;
Zhao, Weijiang ;
Dao, My Ha ;
Liu, Yong .
APPLIED SOFT COMPUTING, 2022, 130
[9]   Inverse design of structural color: finding multiple solutions via conditional generative adversarial networks [J].
Dai, Peng ;
Sun, Kai ;
Yan, Xingzhao ;
Muskens, Otto L. ;
de Groot, C. H. ;
Zhu, Xupeng ;
Hu, Yueqiang ;
Duan, Huigao ;
Huang, Ruomeng .
NANOPHOTONICS, 2022, 11 (13) :3057-3069
[10]  
Dhariwal P, 2021, ADV NEUR IN, V34