Deep Learning the Electromagnetic Properties of Metamaterials—A Comprehensive Review

TitleDeep Learning the Electromagnetic Properties of Metamaterials—A Comprehensive Review
Publication TypeJournal Article
Year of Publication2021
AuthorsO Khatib, S Ren, J Malof, and WJ Padilla
JournalAdvanced Functional Materials
Volume31
Issue31
Date Published08/2021
Abstract

Deep neural networks (DNNs) are empirically derived systems that have transformed traditional research methods, and are driving scientific discovery. Artificial electromagnetic materials (AEMs)—including electromagnetic metamaterials, photonic crystals, and plasmonics—are research fields where DNN results valorize the data driven approach; especially in cases where conventional methods have failed. In view of the great potential of deep learning for the future of artificial electromagnetic materials research, the status of the field with a focus on recent advances, key limitations, and future directions is reviewed. Strategies, guidance, evaluation, and limits of using deep networks for both forward and inverse AEM problems are presented.

DOI10.1002/adfm.202101748
Short TitleAdvanced Functional Materials