Deep learning assisted inverse design of nonreciprocal multilayer photonic structures
Weiran Zhang, Hao Pan, and Shubo Wang

TL;DR
This paper demonstrates how deep learning models can significantly accelerate and improve the design process of nonreciprocal multilayer photonic structures by enabling rapid prediction and inverse design with reduced computational costs.
Contribution
It introduces a combined use of neural networks and variational autoencoders for efficient forward prediction and inverse design of nonreciprocal optical structures, surpassing traditional simulation methods.
Findings
FNN accurately predicts nonreciprocal responses rapidly.
IDN generates structural parameters for target spectra.
VAE explores multiple feasible designs under constraints.
Abstract
Nonreciprocal structures play an important role in optical physics and applications. Conventional approaches for designing nonreciprocal optical structures rely heavily on extensive numerical simulation and parameter tuning, leading to high computational cost and low efficiency. Here, we apply deep learning to the design of nonreciprocal multilayer photonic structures. Three neural-network models-a forward neural network (FNN), an inverse design network (IDN), and a variational autoencoder (VAE)-are employed to learn the complex mapping between structural/material parameters and nonreciprocal spectral characteristics. We show that the FNN can rapidly and accurately predict the nonreciprocal electromagnetic response of a given structure, while the IDN can directly generate suitable structural parameters for target spectral responses. Both approaches substantially reduce computational…
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Taxonomy
TopicsMetamaterials and Metasurfaces Applications · Photonic Crystals and Applications · Electromagnetic Simulation and Numerical Methods
