A physics-based machine learning approach for modeling the complex reflection coefficients of metal nanowires

被引:2
|
作者
Wu, Xiaoqin [1 ]
Wang, Yipei [1 ]
机构
[1] Chongqing Univ, Coll Optoelect Engn, Key Lab Optoelect Technol & Syst, Minist Educ, Chongqing 400044, Peoples R China
基金
中国国家自然科学基金;
关键词
metal nanowires; plasmonic waveguides; complex reflection coefficient; reflectivity; reflection phase; machine learning; PLASMON MODES; WAVE; GOLD; PROPAGATION;
D O I
10.1088/1361-6528/ac512e
中图分类号
TB3 [工程材料学];
学科分类号
0805 ; 080502 ;
摘要
Metal nanowires are attractive building blocks for next-generation plasmonic devices with high performance and compact footprint. The complex reflection coefficients of the plasmonic waveguides are crucial for estimation of the resonating, lasing, or sensing performance. By incorporating physics-guided objective functions and constraints, we propose a simple approach to convert the specific reflection problem of nanowires to a universal regression problem. Our approach is able to efficiently and reliably determine both the reflectivity and reflection phase of the metal nanowires with arbitrary geometry parameters, working environments, and terminal shapes, merging the merits of the physics-based modeling and the data-driven modeling. The results may provide valuable reference for building comprehensive datasets of plasmonic architectures, facilitating theoretical investigations and large-scale designs of nanophotonic components and devices.
引用
收藏
页数:9
相关论文
共 50 条
  • [21] Integrating physics-based modeling and machine learning for degradation diagnostics of lithium-ion batteries
    Thelen, Adam
    Lui, Yu Hui
    Shen, Sheng
    Laflamme, Simon
    Hu, Shan
    Ye, Hui
    Hu, Chao
    ENERGY STORAGE MATERIALS, 2022, 50 : 668 - 695
  • [22] Machine learning symbolic equations for diffusion with physics-based descriptions
    Papastamatiou, Konstantinos
    Sofos, Filippos
    Karakasidis, Theodoros E.
    AIP ADVANCES, 2022, 12 (02)
  • [23] Physics-based machine learning for subcellular segmentation in living cells
    Sekh, Arif Ahmed
    Opstad, Ida S.
    Godtliebsen, Gustav
    Birgisdottir, Asa Birna
    Ahluwalia, Balpreet Singh
    Agarwal, Krishna
    Prasad, Dilip K.
    NATURE MACHINE INTELLIGENCE, 2021, 3 (12) : 1071 - 1080
  • [24] Physics-based representations for machine learning properties of chemical reactions
    van Gerwen, Puck
    Fabrizio, Alberto
    Wodrich, Matthew D.
    Corminboeuf, Clemence
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2022, 3 (04):
  • [25] Quantification of tumorsphere migration with a physics-based machine learning method
    Vong, Chun Kiet
    Wang, Alan
    Dragunow, Mike
    Park, Thomas I. -H.
    Shim, Vickie
    CYTOMETRY PART A, 2023, 103 (06) : 518 - 527
  • [26] Physics-based machine learning for subcellular segmentation in living cells
    Arif Ahmed Sekh
    Ida S. Opstad
    Gustav Godtliebsen
    Åsa Birna Birgisdottir
    Balpreet Singh Ahluwalia
    Krishna Agarwal
    Dilip K. Prasad
    Nature Machine Intelligence, 2021, 3 : 1071 - 1080
  • [27] Physics-based modeling of metal additive manufacturing processes: a review
    Xu, Shuozhi
    Araghi, Mohammad Younes
    Su, Yanqing
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2024, 134 (1-2): : 1 - 13
  • [28] An adaptive Physics-based feature engineering approach for Machine Learning-assisted alloy discovery
    Soofi, Yasaman J.
    Gu, Yijia
    Liu, Jinling
    COMPUTATIONAL MATERIALS SCIENCE, 2023, 226
  • [29] Hybrid machine learning/physics-based approach for predicting oxide glass-forming ability
    Wilkinson, Collin J.
    Trivelpiece, Cory
    Hust, Rob
    Welch, Rebecca S.
    Feller, Steve A.
    Mauro, John C.
    ACTA MATERIALIA, 2022, 222
  • [30] Physics-based explosion modeling
    Bashforth, B
    Yang, YH
    GRAPHICAL MODELS, 2001, 63 (01) : 21 - 44