Machine Learning Models for Photonic Crystals Band Diagram Prediction and Gap Optimisation

9 Pages Posted: 30 Aug 2022

See all articles by A. Nikulin

A. Nikulin

Hamburg University of Technology

I. Zisman

Hamburg University of Technology

M. Eich

Hamburg University of Technology

A.Yu. Petrov

Hamburg University of Technology

A. Itin

Hamburg University of Technology

Abstract

Data-driven methods of machine learning (ML) have attracted a lot of interest in various fields of physics. Inverse design and optimisation of structured optical metamaterials such as photonic crystals, metasurfaces, and other nanostructured components seem to benefit a lot from this approach in the nearest future.  Here we develop several approaches to use ML methods to predict and optimise properties of photonic crystals (e.g. size of bandgaps) effectively. We use a dataset of 2D photonic crystals produced recently in [T.Christinsen et. al., Nanophotonics 9, 4183 (2020)]. For improving performance of predictive models, we apply symmetry-aware augmentations and hybrid ML-solver approaches. As a result,  considerable improvement in prediction accuracy could be achieved as compared to baseline models. For generative models, we apply variational autoencoders (VAEs) combined with predictor architecture, inspired by related works in chemical design realm. By using latent space optimisation, we achieve good results in the task of increasing bandgaps of photonic structures. The approach seems to be very promising and can be extended to 3D geometries.

Keywords: Photonic crystals, photonic bandgap materials, neural networks, machine learning

Suggested Citation

Nikulin, A. and Zisman, I. and Eich, M. and Petrov, A.Yu. and Itin, A., Machine Learning Models for Photonic Crystals Band Diagram Prediction and Gap Optimisation. Available at SSRN: https://ssrn.com/abstract=4204785 or http://dx.doi.org/10.2139/ssrn.4204785

A. Nikulin

Hamburg University of Technology ( email )

Hamburg
Germany

I. Zisman

Hamburg University of Technology ( email )

Hamburg
Germany

M. Eich

Hamburg University of Technology ( email )

Hamburg
Germany

A.Yu. Petrov

Hamburg University of Technology ( email )

Hamburg
Germany

A. Itin (Contact Author)

Hamburg University of Technology ( email )

Hamburg
Germany

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