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Conference 13109 > Paper 13109-12
Paper 13109-12

Toward the meta-atom Library: experimental validation of machine learning-based Mie-tronics (Invited Paper)

18 August 2024 • 2:30 PM - 2:55 PM PDT | Conv. Ctr. Room 6C

Abstract

We report an experimental validation of a machine learning-based design method that significantly accelerates the development of all-dielectric complex-shaped meta-atoms supporting specified Mie-type resonances at the desired wavelength, circumventing the conventional time-consuming approaches. We used machine learning to design isolated meta-atoms with specific electric and magnetic responses, verified them within the quasi-normal mode expansion framework, and explored the effects of the substrate and periodic arrangements of such meta-atoms. Since the implemented method allowed for the swift transition from design to fabrication, the optimized meta-atoms were fabricated, and their corresponding scattering spectra were measured using white light spectroscopy, demonstrating an excellent agreement with the theoretical predictions.

Presenter

Duke Univ. (United States)
Application tracks: AI/ML
Presenter/Author
Duke Univ. (United States)
Author
Duke Univ. (United States)
Author
Duke Univ. (United States)
Author
Harbin Institute of Technology (China)
Author
Wenhao Li
Duke Univ. (United States)
Author
Yuruo Zheng
Duke Univ. (United States)
Author
Duke Univ. (United States)
Author
Duke Univ. (United States)
Author
Harbin Institute of Technology (China)
Author
Jingbo Sun
Tsinghua Univ. (China)