Learning and Predicting Photonic Responses of Plasmonic Nanoparticle Assemblies via Dual Variational Autoencoders

Author:

Yaman Muammer Y.1ORCID,Kalinin Sergei V.2ORCID,Guye Kathryn N.1ORCID,Ginger David S.13ORCID,Ziatdinov Maxim45ORCID

Affiliation:

1. Department of Chemistry University of Washington Seattle WA 98195 USA

2. Department of Materials Science and Engineering University of Tennessee Knoxville TN 37996 USA

3. Physical Sciences Division Physical and Computational Sciences Directorate Pacific Northwest National Laboratory Richland WA 99354 USA

4. Center for Nanophase Materials Sciences Oak Ridge National Laboratory Oak Ridge TN 37831 USA

5. Computational Sciences and Engineering Division Oak Ridge National Laboratory Oak Ridge TN 37831 USA

Abstract

AbstractThe application of machine learning is demonstrated for rapid and accurate extraction of plasmonic particles cluster geometries from hyperspectral image data via a dual variational autoencoder (dual‐VAE). In this approach, the information is shared between the latent spaces of two VAEs acting on the particle shape data and spectral data, respectively, but enforcing a common encoding on the shape‐spectra pairs. It is shown that this approach can establish the relationship between the geometric characteristics of nanoparticles and their far‐field photonic responses, demonstrating that hyperspectral darkfield microscopy can be used to accurately predict the geometry (number of particles, arrangement) of a multiparticle assemblies below the diffraction limit in an automated fashion with high fidelity (for monomers (0.96), dimers (0.86), and trimers (0.58). This approach of building structure‐property relationships via shared encoding is universal and should have applications to a broader range of materials science and physics problems in imaging of both molecular and nanomaterial systems.

Funder

Energy Frontier Research Centers

University of Washington

U.S. Department of Energy

Office of Science

Basic Energy Sciences

Clean Energy Institute

Publisher

Wiley

Subject

Biomaterials,Biotechnology,General Materials Science,General Chemistry

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