| Literature DB >> 31825227 |
Peter R Wiecha1, Otto L Muskens1.
Abstract
Deep artificial neural networks are powerful tools with many possible applications in nanophotonics. Here, we demonstrate how a deep neural network can be used as a fast, general purpose predictor of the full near-field and far-field response of plasmonic and dielectric nanostructures. A trained neural network is shown to infer the internal fields of arbitrary three-dimensional nanostructures many orders of magnitude faster compared to conventional numerical simulations. Secondary physical quantities are derived from the deep learning predictions and faithfully reproduce a wide variety of physical effects without requiring specific training. We discuss the strengths and limitations of the neural network approach using a number of model studies of single particles and their near-field interactions. Our approach paves the way for fast, yet universal, methods for design and analysis of nanophotonic systems.Keywords: Deep learning; nanophotonics; plasmonics; rapid nano-optics simulations; silicon nanostructures
Year: 2019 PMID: 31825227 DOI: 10.1021/acs.nanolett.9b03971
Source DB: PubMed Journal: Nano Lett ISSN: 1530-6984 Impact factor: 11.189