Affiliation:
1. Beijing Jiaotong University
2. Xuanji Lab, Beijing ASU Tech Co. Ltd, Beijing Normal University Science & Technology Mansion
Abstract
We propose a machine-learning-based method for grating waveguides and
augmented reality, significantly reducing the computation time
compared with existing finite-element-based numerical simulation
methods. Among the slanted, coated, interlayer, twin-pillar, U-shaped,
and hybrid structure gratings, we exploit structural parameters such
as grating slanted angle, grating depth, duty cycle, coating ratio,
and interlayer thickness to construct the gratings. The multi-layer
perceptron algorithm based on the Keras framework was used with a
dataset comprised of 3000–14,000 samples. The training accuracy
reached a coefficient of determination of more than 99.9% and an
average absolute percentage error of 0.5%–2%. At the same time, the
hybrid structure grating we built achieved a diffraction efficiency of
94.21% and a uniformity of 93.99%. This hybrid structure grating also
achieved the best results in tolerance analysis. The high-efficiency
artificial intelligence waveguide method proposed in this paper
realizes the optimal design of a high-efficiency grating waveguide
structure. It can provide theoretical guidance and technical reference
for optical design based on artificial intelligence.
Funder
National Natural Science Foundation of
China
Subject
Atomic and Molecular Physics, and Optics,Engineering (miscellaneous),Electrical and Electronic Engineering
Cited by
7 articles.
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