Neural network-based prediction and optimization of optical properties of two-dimensional GaAs dielectric background photonic crystal point-defect microcavities

Weitong Liu
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Abstract

The aim of this study is to develop a neural network model of point-defect microcavities in two-dimensional GaAs dielectric background photonic crystals in order to accurately predict and optimize their optical properties. Point-defect microcavities are localized structures in photonic crystals with the ability to modulate optical modes and enhance light-matter interactions. However, existing methods are unable to fully capture their complexity and multiparametric properties. Therefore, present study propose to utilize a neural network model to quickly and accurately predict the optical properties of point-defect microcavities. With this model, present study can effectively address the challenges faced by conventional methods in design and optimization. The results of this study will promote the development of photonic devices and photonic integration technologies, and facilitate the application of photonics in the fields of information technology, communication, energy and biomedicine.
基于神经网络的二维砷化镓介电背景光子晶体点缺陷微腔光学特性预测与优化
本研究旨在开发二维砷化镓介电背景光子晶体中点缺陷微腔的神经网络模型,以准确预测和优化其光学特性。点缺陷微腔是光子晶体中的局部结构,具有调制光学模式和增强光物质相互作用的能力。然而,现有方法无法完全捕捉其复杂性和多参数特性。因此,本研究提出利用神经网络模型来快速准确地预测点缺陷微腔的光学特性。有了这个模型,本研究就能有效解决传统方法在设计和优化方面所面临的挑战。本研究的成果将推动光子器件和光子集成技术的发展,促进光子学在信息技术、通信、能源和生物医学等领域的应用。
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